US20110047636A1 - Crop Automated Relative Maturity System - Google Patents

Crop Automated Relative Maturity System Download PDF

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Publication number
US20110047636A1
US20110047636A1 US12/861,513 US86151310A US2011047636A1 US 20110047636 A1 US20110047636 A1 US 20110047636A1 US 86151310 A US86151310 A US 86151310A US 2011047636 A1 US2011047636 A1 US 2011047636A1
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plants
plots
plot
maturity
field
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Walter Stachon
Ken Luebbert
Keith Bilyeu
Joe Strottman
Ryan Larson
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Syngenta Participations AG
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Publication of US20110047636A1 publication Critical patent/US20110047636A1/en
Priority to US13/619,834 priority patent/US20130019332A1/en
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    • GPHYSICS
    • G01MEASURING; TESTING
    • G01CMEASURING DISTANCES, LEVELS OR BEARINGS; SURVEYING; NAVIGATION; GYROSCOPIC INSTRUMENTS; PHOTOGRAMMETRY OR VIDEOGRAMMETRY
    • G01C11/00Photogrammetry or videogrammetry, e.g. stereogrammetry; Photographic surveying
    • G01C11/02Picture taking arrangements specially adapted for photogrammetry or photographic surveying, e.g. controlling overlapping of pictures
    • AHUMAN NECESSITIES
    • A01AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
    • A01GHORTICULTURE; CULTIVATION OF VEGETABLES, FLOWERS, RICE, FRUIT, VINES, HOPS OR SEAWEED; FORESTRY; WATERING
    • A01G7/00Botany in general
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/17Systems in which incident light is modified in accordance with the properties of the material investigated
    • G01N21/25Colour; Spectral properties, i.e. comparison of effect of material on the light at two or more different wavelengths or wavelength bands
    • G01N21/31Investigating relative effect of material at wavelengths characteristic of specific elements or molecules, e.g. atomic absorption spectrometry
    • G01N21/314Investigating relative effect of material at wavelengths characteristic of specific elements or molecules, e.g. atomic absorption spectrometry with comparison of measurements at specific and non-specific wavelengths
    • G01N21/3151Investigating relative effect of material at wavelengths characteristic of specific elements or molecules, e.g. atomic absorption spectrometry with comparison of measurements at specific and non-specific wavelengths using two sources of radiation of different wavelengths
    • AHUMAN NECESSITIES
    • A01AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
    • A01BSOIL WORKING IN AGRICULTURE OR FORESTRY; PARTS, DETAILS, OR ACCESSORIES OF AGRICULTURAL MACHINES OR IMPLEMENTS, IN GENERAL
    • A01B79/00Methods for working soil
    • A01B79/005Precision agriculture
    • AHUMAN NECESSITIES
    • A01AGRICULTURE; FORESTRY; ANIMAL HUSBANDRY; HUNTING; TRAPPING; FISHING
    • A01CPLANTING; SOWING; FERTILISING
    • A01C21/00Methods of fertilising, sowing or planting
    • A01C21/007Determining fertilization requirements
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N21/00Investigating or analysing materials by the use of optical means, i.e. using sub-millimetre waves, infrared, visible or ultraviolet light
    • G01N21/84Systems specially adapted for particular applications
    • G01N2021/8466Investigation of vegetal material, e.g. leaves, plants, fruits

Definitions

  • the present invention relates generally to a system for measuring relative maturity of a crop and, more specifically, to an automated relative maturity system for measuring quickly and efficiently relative maturity of a large number of plants of diverse varieties.
  • the growing season for agricultural crops varies from location to location. In the United States, the growing season is longer the farther south the crop growing location and shorter the farther north the crop growing location. While there is no standardized maturity zone map, for soybeans, most divide the United States into eleven or twelve maturity zones. farmers can improve their opportunity for high yields by planting seed of varieties that have maturities adapted to the growing season at the farmer's location. Accordingly, the seed of varieties of most major crops, including corn, rapeseed (or canola), soybeans, sunflower, and wheat, are sold by seed companies primarily into the maturity zone corresponding to the relative maturity of the variety. In the development of novel crop varieties, relative maturity is a critical characteristic that is tracked and measured by the seed companies.
  • the present invention consists of an automated relative maturity system for measuring the relative maturity of a large number of plots of diverse varieties of plants growing in a field or fields.
  • a field to be evaluated is laid out in multiple plots with a specific variety assigned to a preselected plot or plots and with areas set aside throughout the field for planting of check varieties of known relative maturity.
  • High-precision GPS is used with a planter to record the location of each plot within the field.
  • a radiometric crop sensor mounted on a vehicle is used to scan the plants in the plots to record readings of the plants synchronized to the GPS map locations, including the check plants of known relative maturity.
  • Software is used to calculate the relative maturity of each variety. In a preferred embodiment, this relative maturity data is passed on to a database of other characteristics of each individual variety evaluated in the field.
  • FIG. 1 is a representation of a map of a field in which pluralities of varieties of a crop are to be planted.
  • FIG. 2 is a representation of the field of FIG. 1 showing the path of a sensor transport traversing the field.
  • FIG. 3 is a front view of a sensor transport used in the present invention for moving a pair of radiometric sensors over plants in the field.
  • FIG. 4 is a rear side view of the sensor transport of FIG. 3 .
  • FIG. 5 is a diagram showing the arrangement of plots of Field A.
  • FIG. 6 is a diagram showing the arrangement of plots of Field C.
  • FIG. 7 is a diagram showing a 48 range by 54 row section of Field A, check strips planted in rows 1-6 and 49-54 and experimental varieties in rows 7-48.
  • FIG. 8 is a diagram showing a 48 range by 52 row section of Field C, check strips planted in rows 1-4 and 49-52 and experimental varieties in rows 5-48.
  • FIG. 9 is a chart of radiometric relative maturity value vs. NDVI using the data from Table 3.
  • FIG. 10 is a chart of radiometric relative maturity value vs. NDVI using the data from Table 4.
  • FIG. 11 a Photograph of above canopy active sensor method for corn staygreen phenotyping methodology
  • FIG. 11 b Photograph of Corn Staygreen phenotyping methodology below canopy active sensor method
  • FIG. 12 a Graph depicting average staygreen visual readings and active sensor readings across 631 and 641
  • FIG. 12 b Graph depicting average staygreen visual readings and active sensor readings across 631 and 641
  • FIG. 13 a Graph depicting correlation of visual to active sensor readings, peak on week 5
  • FIG. 13 b Graph depicting correlation of hybrid rankings, visual to active sensor, stable for two weeks, 4 and 5
  • FIG. 13 c Graph depicting hybrid ⁇ 60% visual staygreen is a good indicator for center of two week stable scanning period
  • FIG. 13 d Graph depicting comparison of above and below scanning methods the below good on first date above best and stable for two weeks, 4 and 5
  • FIG. 13 e Graph depicting inbred correlation of visual to active sensor readings, peak on week 5
  • FIG. 13 f Graph depicting correlation of inbred rankings, visual to active sensor, relatively stable for three weeks, week 3, 4 and 5
  • FIG. 13 g Graph depicting inbred 50% visual staygreen is a good indicator for center of three week stable scanning period
  • Plants absorb and reflect specific wavelengths of light across the spectrum of natural light. The pattern of reflectance and absorbance changes through the life cycle of the plant. Indices comprised of specific wavelengths of reflected energy correlate with the condition of the plant.
  • spongy mesophyll leaf tissue has a high reflectance in the near infrared (NIR) generally defined as the range between approximately 700 and 1000 nm. Since the spongy mesophyll section of the leaf is structurally stable in a healthy leaf and will have a relatively high reflectance in the NIR, whereas the leaf tissue of plants undergoing senescence will have increasingly reduced reflectance in the NIR.
  • NIR near infrared
  • the chlorophyll in plants has a high absorbance in the range of between approximately 400 to 500 and 600 to 700 nm, referred to herein as blue and red light, respectively. Accordingly, as the amount of chlorophyll in the plant tissue decreases over time during senescence, the relative absorbance of visual light will decrease.
  • radiometric crop sensors that measure the reflectance and absorbance of one or more frequencies of light by plant tissues.
  • active sensors which use one or more internal light sources to illuminate the plants being evaluated
  • passive sensors which use ambient light only.
  • a preferred sensor is the GreenSeeker® RT100 sold by NTech Industries (Ukiah, Calif.) a Trimble Navigation Limited Company, Sunnyvale, Calif.
  • active light sources so-called passive sensors that utilize ambient light may also be used.
  • passive sensors may be adapted to use visual light, most commonly the red and NIR wavelengths to generate information about the conditions of plants.
  • a commonly used index in assessing crop conditions is the normalized difference vegetative index (NDVI).
  • NDVI normalized difference vegetative index
  • NIR is the reflectance in the NIR range and V is the reflectance in the visual range.
  • Preferred sensors for use with the present invention generate an output that is in NDVI units.
  • GPS Global Positioning Satellite
  • Pseudolites are ground- or near ground-based transmitters which broadcast a pseudorandom (PRN) code (similar to a GPS signal) modulated on an L-band (or other frequency) carrier signal, generally synchronized with GPS time. Each transmitter may be assigned a unique PRN code so as to permit identification by a remote receiver.
  • PRN pseudorandom
  • FIG. 1 illustrates an agricultural field 10 which has been planted in accordance with the methods described herein.
  • a planter equipped with a high-precision GPS receiver results in the development of a digital map of the agricultural field 10 .
  • the map defined through this operation may become the base map and/or may become a control feature for a machine guidance and/or control system to be discussed in further detail below.
  • the map should be of sufficient resolution so that the precise location of a vehicle within the area defined by the map can be determined to a few inches with reference to the map.
  • GPS receivers for example as the ProPak®-V3produced by NovAtel Inc. (Calgary, Alberta, Canada) are capable of such operations.
  • a tractor or other vehicle is used to tow a planter across the field 10 .
  • the planter is fitted with a GPS receiver which receives transmissions from GPS satellites and a reference station.
  • a monitoring apparatus which records the position of seeds as they are planted by the planter. In other words, using precise positioning information provided by the GPS receiver and an input provided by the planter, the monitoring apparatus records the location at which each seed is deposited by the planter in the field 10 .
  • a digital map is established wherein the location of each seed planted in field 10 is stored.
  • a map or other data structure which provides similar information may be produced on-the-fly as planting operations are taking place.
  • the map may make use of a previously developed map (e.g., one or more maps produced from earlier planting operations, etc.).
  • the previously stored map may be updated to reflect the position of the newly planted seeds.
  • a previously stored map is used to determine the proper location for the planting of the seeds/crops.
  • the determination as to when to make this planting is made according to a comparison of the planter's present position as provided by the GPS receiver and the seeding information from the database.
  • the planting information may accessible through an index which is determined according to the planter's current position (i.e., a position-dependent data structure).
  • a look-up table or other data structure can be accessed to determine whether a seed should be planted or not.
  • the seeding data need not be recorded locally at the planter. Instead, the data may be transmitted from the planter to some remote recording facility (e.g., a crop research station facility or other central or remote workstation location) at which the data may be recorded on suitable media.
  • some remote recording facility e.g., a crop research station facility or other central or remote workstation location
  • the overall goal, at the end of the seeding operation, is to have a digital map which includes the precise position (e.g., to within a few inches) of the location of each seed planted. As indicated, mapping with the GPS technology is one means of obtaining the desired degree of accuracy.
  • the development of novel varieties of crops typically involves growing a large number of varieties side-by-side in research fields in what are sometimes called preliminary yield trials.
  • a common arrangement is to plant each individual variety in a plot that includes a sufficient number of plants to generate valid data, leaving space between plots for access by workers and field equipment.
  • the field 10 is divided into a plurality of rectangular plots 12 divided by unplanted rows 14 and 16.
  • check plots 18 are included.
  • the check plots 18 are planted with varieties of known maturity to be used as a comparison for the relative maturity of plants in the research plots.
  • a number of different check varieties are planted to provide a range of maturities to span the expected maturities of the plants in the research plots.
  • the field 10 is organized in non-replicated blocks of 2122 plots 12 .
  • Most of the plots are planted with experimental varieties of similar parentage and a smaller number of the plots are planted with a selection of different check varieties ( FIGS. 7 and 8 ).
  • Each plot 12 has one row with a planting density of 10 seeds per foot and is approximately 7 feet long.
  • the unplanted rows 14 and 16 provide approximately three feet of walkway/vehicle access. It is common to plant experimental varieties having an expected range of maturities covering no more than three maturity zones so that all plants will reach maturity within approximately a one-month period. For soybeans, maturity is generally defined as plants having dropped all leaves and with 95% of pods having a mature brown color.
  • the latitude and longitude location of each plant in the field 10 is converted into a reference area within each of the plots 12 in the digital map of the field 10 , resulting in a map 20 as represented in FIG. 2 .
  • each data point collected from the radiometric sensor which preferably is in the form of an NDVI index, includes latitude and longitude information.
  • the data points are correlated to the location of the plants on the map 20 , including the check plots 18 .
  • the radiometric data collected from the check plots 18 is used to calibrate the sensor and the collected data from the experimental plots 12 .
  • the NDVI data for each plant is then assigned a relative maturity value based on its relationship to the NDVI data from the check plots 18 . In a preferred embodiment, the relative maturity data is passed to a comprehensive database of other characteristics of the experimental varieties.
  • One method of moving the radiometric sensor over the field 10 is manually. A worker simply carries the sensor through the field, holding it above each plant in each plot.
  • a more efficient way of taking the radiometric data is to mount one or more radiometric sensors on a vehicle that then travels the field 10 , collecting data on the fly.
  • a vehicle used for detasseling corn such as a PDF 450G detassler (Product Design and Fabrication, Cedar Rapids, Iowa) is modified to create a sensor transport 22 ( FIGS. 3 and 4 ) to carry a pair of radiometric sensors 24 and 26 .
  • a forward horizontal tool bar 28 of the sensor transport 22 is mounted transversely of the direction of travel of the transport 22 .
  • the sensors 24 and 26 are mounted on the tool bar 28 , the vertical position of which is adjustable to position the sensors 24 and 26 the desired reading distance above the plant canopy.
  • the manufacturer recommends that the sensor be positioned between 32 inches and 48 inches above the plant canopy, typically about 30 inches for soybeans.
  • the present invention provides methods for generating high through put phenotype data that can be used to characterize plants.
  • This phenotypic data also can be employed in various types of plant breeding and selection including marker assisted breeding.
  • This data can be utilized in analyzing seeds or plant tissue material for genetic characteristics that associate with the relative maturity or stay green phenotype of the individual plants or plants which are genetically related.
  • the genetic characteristics associated with the plant evidencing the presences or absences of the phenotype can be determined by analytical methods. These methods can use markers or genomics data for the detection of chemical, allelic, polymorphic, base pair or amino acid differences.
  • Samples prepared from the phenotyped seeds or plant materials can be used to establish the desirable genetic attributes that are associated with the selected genotype. Once the selected genotype is identified, it can be used for plant selection thorough out the breeding or selection process.
  • the methods and devices of the present invention can be used in a breeding program to select plants or seeds having a desired trait, whether genetically modified or native trait or marker genotype associated with the phenotype detected with the high through put relative maturity or stay green data.
  • the methods of the present invention can be used in combination with any breeding methodology and can be used to select a single generation or to select multiple generations or plants or seeds.
  • breeding method depends on the mode of plant reproduction, the heritability of the trait(s) being improved, and the type of cultivar used (hybrid, inbred, varietal). It is further understood that this device produces phenotypic data for cultivars which can be utilized in a breeding program, in conjunction with selection on any number of other parameters such as emergence vigor, vegetative vigor, stress tolerance, disease resistance, branching, flowering, seed set, seed size, seed density, standability, and threshability etc. to make breeding selections or decisions.
  • the methods of the present invention are used to determine the genetic characteristics of seeds or plants in a marker-assisted breeding program.
  • Such methods allow for improved marker-assisted breeding programs wherein direct seed or tissue sampling can be conducted while maintaining the identity of individuals from the field.
  • the marker-assisted breeding program results in a “high-throughput” platform wherein a subpopulation of seeds/plants having a desired trait, marker or genotype can be more effectively selected and bulked in a shorter period of time, with less field and labor resources required.
  • Field A Two fields were planted on a farm located near Ames, Iowa. Field A was planted on May 21. Field A comprised 21 acres (1920 feet by 480 feet) and was divided into 36,864 plots as shown in FIG. 5 .
  • Check variety S08-M8 was planted in rows 1 and 2 and 49 and 50, and check varieties S15-R2, S21-N6, S25-B9 and S30-F5 were planted in rows 2-6 and 51-54, respectively.
  • Experimental varieties were planted in the other plots. Specifically, experimental varieties A-N were planted in rows 7-20, respectively, and across range 1 ( FIG. 7 ).
  • Field C was planted June 17 the same year. Field C comprised 20 acres (1800 feet by 480 feet) and was divided into 34,560 plots as shown in FIG. 6 .
  • Check varieties S15-R2, S21-N6, S25-B9 and 530-F5 were planted in rows 1-4 and 49-52, respectively. Experimental varieties were planted in the other plots. Specifically, experimental varieties O-Z and A1-D1 were planted in rows 5-20, respectively, and across rangel ( FIG. 8 ). The check varieties covered maturity groups 0.8-3, as set out in Tables 1 and 2.
  • the seed was planted at a density of 10 seeds per foot and a row width 30 inches and a GPS map of the seed planted in the fields was created at the time of planting.
  • Data was collected from Field A on September 2, and from Field C on September 23 and 26 of the same year. Data was collected using the PDF 450G detasseling machine, modified as shown in FIGS. 3 and 4 .
  • the speed of the detassler was approximately 3 mph and it was driven transverse to the rows.
  • the GreenSeeker® RT100 sensor was set to collect data at 50 msec (20 data points per second) to match the GPS data stream from the NovAtel ProPak®-V3 device. To reduce row to row sample contamination, 15 inches of each 30 inch row was considered the target collection area. At 3 mph, 15 inches is covered in 0.28 sec, giving 5.7 data points per plot, which was deemed an acceptable number of data points per plot.
  • the data output of the GPS and radiometric crop sensor taken from Field A is set out in Table 3.
  • the data output of the GPS and radiometric crop sensor taken from Field C is set out in Table 5.
  • the NDVI data is correlated to maturity groups by a graph of relative maturity value (RMT_N), determined by the average NDVI for each check variety, versus NDVI.
  • the graph from Field A is shown in FIG. 9 and the graph from Field C is shown in FIG. 10 .
  • FIG. 9 The graph from Field A is shown in FIG. 9 and the graph from Field C is shown in FIG. 10 .
  • the data shows the final average maturity of field A was a maturity of 2.2 and field C was 2.0.
  • FIGS. 11 a and 11 b An experiment using the devices shown in FIGS. 11 a and 11 b were employed on maize to detect the staygreen of plants in trials. Staygreen is a function of plant health, plant stress, insect and disease pressures on the plant These stay green trials were maize inbred trials and maize hybrids trials. The hybrid trials had 8, 30 inch rows, 40 foot long plots. The data was collected with canopy readings taken between rows four and five, of all 65 plots. Below canopy readings taken between rows four and five, on the first set of 16 plots.
  • the inbred trial had 1, 30 inch row, 20 foot long plots. The above canopy readings taken over the row, for the first 100 plots. In all the trials, five readings, one per week, were taken. Some frost damage occurred between the 4 th reading and last collection date. Average staygreen readings were taken as visual readings and active sensor readings as shown in FIGS. 12 a and 12 b.
  • the graphs in FIGS. 13 a - g depict the correlation of the staygreen visual and active sensor readings across time.
  • the 60% for hybrids and the 50% staygreen for inbreds is a good indicator for peak correlation of visual phenotype detection with the active sensor readings.
  • the sensor was employed to identify nine of the top ten staygreen hybrids ranked by visual selection.
  • This phenotypic data can be used in a trait mapping experiment to develop genetic characteristics that associate with the phenotype of staygreen. This high through put automated data collection can be utilized in indentifying markers that associate with staygreen phenotypes. The phenotypic data can then be employed in the development of a marker assisted breeding programs. This data can also be captured across time to identify the most critical time for silage production or the prime harvesting timeframes for inbreds or hybrids. This data can be sent from the device to a remote location for analysis of the data.
  • the method of the present invention include capturing the sensor data and analyzing the data for use in phenotyping, marker validation and selection, marker assisted breeding, selections, and producing breeding programs with inbreds and hybrid combination and the seeds and plants and progeny thereof that have the phenotypic traits introgressed through use of the breeding material mapped or selected for relative maturity, staygreen, health, disease, stress, vigor and the like.
  • the seed was planted at a density of 10 seeds per foot and a row width 30 inches and a GPS map of the seed planted in the fields was created at the time of planting.
  • Data was to be collected from the soybean field for determination of relative maturity. However, prior to the time period for data collection the field was highly impacted by Sudden Death Syndrome (SDS). This disease causes plants particularly those in the R4-R6 stage to die prematurely. Premature death of part of the plants in the field most susceptible to Sudden Death Syndrome would skew any relative maturity ratings. It was determined that data will be collected using the PDF 450G detasseling machine, modified as shown in FIGS. 3 and 4 . The speed of the detassler will be approximately 3 mph and driven transverse to the rows.
  • the GreenSeeker® RT100 sensor will initially be set to collect data at 50 msec (20 data points per second) to match the GPS data stream from the NovAtel ProPak®-V3 device. To reduce row to row sample contamination, 15 inches of each 30 inch row will be considered the target collection area. At 3 mph, 15 inches is covered in 0.28 sec, giving 5.7 data points per plot, which is deemed an acceptable number of data points per plot. However, by employing two sensors per row at a slightly lower rate, 63 Hz, 4.5 data points per second from 2 sensors provides 9 data points per plot. Instead of collecting data to determine the relative maturity of the plants, the data is being collected to determine which plants in the plots are susceptible to SDS and which are more tolerant.

Abstract

An automated relative maturity system for measuring the relative maturity of a large number of plots of diverse varieties of plants growing in a field or fields. A field to be evaluated is laid out in multiple plots with a specific variety assigned to a preselected plot or plots and with areas set aside throughout the field for planting of check varieties of known relative maturity. High-precision GPS is used with a planter to record the location of each plot within the field on a map. When leaf senescence is under way throughout the field, a radiometric crop sensor mounted on a vehicle also equipped with high-precision GPS is used to scan the plants in the plots to record readings of the plants synchronized to the GPS map locations, including the check plants of known relative maturity. Software is used to calculate the relative maturity of each variety.

Description

    CROSS REFERENCE TO RELATED APPLICATION
  • This application claims benefit of U.S. Provisional Application Ser. No. 61/235,908 filed Aug. 21, 2009 and U.S. Provisional Application Ser. No. 61/349,018 filed May 27, 2010 and U.S. Provisional Application Ser. No. 61/373,471 filed Aug. 13, 2010 which are incorporated herein by reference in their entirety.
  • BACKGROUND OF THE INVENTION
  • The present invention relates generally to a system for measuring relative maturity of a crop and, more specifically, to an automated relative maturity system for measuring quickly and efficiently relative maturity of a large number of plants of diverse varieties.
  • The growing season for agricultural crops varies from location to location. In the United States, the growing season is longer the farther south the crop growing location and shorter the farther north the crop growing location. While there is no standardized maturity zone map, for soybeans, most divide the United States into eleven or twelve maturity zones. Farmers can improve their opportunity for high yields by planting seed of varieties that have maturities adapted to the growing season at the farmer's location. Accordingly, the seed of varieties of most major crops, including corn, rapeseed (or canola), soybeans, sunflower, and wheat, are sold by seed companies primarily into the maturity zone corresponding to the relative maturity of the variety. In the development of novel crop varieties, relative maturity is a critical characteristic that is tracked and measured by the seed companies.
  • In the past, maturity was measured manually. Workers would walk through fields having multiple plots of varieties under development as the plants neared maturity and, based on a visual evaluation of the plants, come up with a subjective maturity of plants in each of the plots relative to other plants in the field, typically including a number of check plants of known maturity. Collecting data using this method is very time consuming. In addition, despite best efforts, there is inevitably variation in each data collector's subjective evaluation of maturity and also a tendency even among individual data collectors to alter a subjective evaluation of maturity, especially between fields.
  • There is, accordingly, a need for a high-speed, automated and more objective system for measuring relative maturity of diverse varieties of plants growing in one or multiple fields.
  • SUMMARY OF THE INVENTION
  • The present invention consists of an automated relative maturity system for measuring the relative maturity of a large number of plots of diverse varieties of plants growing in a field or fields. A field to be evaluated is laid out in multiple plots with a specific variety assigned to a preselected plot or plots and with areas set aside throughout the field for planting of check varieties of known relative maturity. High-precision GPS is used with a planter to record the location of each plot within the field. At a selected time in the life cycle of the crop, preferably when leaf senescence is under way throughout the field, a radiometric crop sensor mounted on a vehicle is used to scan the plants in the plots to record readings of the plants synchronized to the GPS map locations, including the check plants of known relative maturity. Software is used to calculate the relative maturity of each variety. In a preferred embodiment, this relative maturity data is passed on to a database of other characteristics of each individual variety evaluated in the field.
  • BRIEF DESCRIPTION OF THE DRAWINGS
  • FIG. 1 is a representation of a map of a field in which pluralities of varieties of a crop are to be planted.
  • FIG. 2 is a representation of the field of FIG. 1 showing the path of a sensor transport traversing the field.
  • FIG. 3 is a front view of a sensor transport used in the present invention for moving a pair of radiometric sensors over plants in the field.
  • FIG. 4 is a rear side view of the sensor transport of FIG. 3.
  • FIG. 5 is a diagram showing the arrangement of plots of Field A.
  • FIG. 6 is a diagram showing the arrangement of plots of Field C.
  • FIG. 7 is a diagram showing a 48 range by 54 row section of Field A, check strips planted in rows 1-6 and 49-54 and experimental varieties in rows 7-48.
  • FIG. 8 is a diagram showing a 48 range by 52 row section of Field C, check strips planted in rows 1-4 and 49-52 and experimental varieties in rows 5-48.
  • FIG. 9 is a chart of radiometric relative maturity value vs. NDVI using the data from Table 3.
  • FIG. 10 is a chart of radiometric relative maturity value vs. NDVI using the data from Table 4.
  • FIG. 11 a Photograph of above canopy active sensor method for corn staygreen phenotyping methodology
  • FIG. 11 b Photograph of Corn Staygreen phenotyping methodology below canopy active sensor method
  • FIG. 12 a Graph depicting average staygreen visual readings and active sensor readings across 631 and 641
  • FIG. 12 b Graph depicting average staygreen visual readings and active sensor readings across 631 and 641
  • FIG. 13 a Graph depicting correlation of visual to active sensor readings, peak on week 5
  • FIG. 13 b Graph depicting correlation of hybrid rankings, visual to active sensor, stable for two weeks, 4 and 5
  • FIG. 13 c Graph depicting hybrid −60% visual staygreen is a good indicator for center of two week stable scanning period
  • FIG. 13 d Graph depicting comparison of above and below scanning methods the below good on first date above best and stable for two weeks, 4 and 5
  • FIG. 13 e Graph depicting inbred correlation of visual to active sensor readings, peak on week 5
  • FIG. 13 f Graph depicting correlation of inbred rankings, visual to active sensor, relatively stable for three weeks, week 3, 4 and 5
  • FIG. 13 g Graph depicting inbred 50% visual staygreen is a good indicator for center of three week stable scanning period
  • DETAILED DESCRIPTION OF PREFERRED EMBODIMENTS
  • Plants absorb and reflect specific wavelengths of light across the spectrum of natural light. The pattern of reflectance and absorbance changes through the life cycle of the plant. Indices comprised of specific wavelengths of reflected energy correlate with the condition of the plant. For example, spongy mesophyll leaf tissue has a high reflectance in the near infrared (NIR) generally defined as the range between approximately 700 and 1000 nm. Since the spongy mesophyll section of the leaf is structurally stable in a healthy leaf and will have a relatively high reflectance in the NIR, whereas the leaf tissue of plants undergoing senescence will have increasingly reduced reflectance in the NIR. The chlorophyll in plants has a high absorbance in the range of between approximately 400 to 500 and 600 to 700 nm, referred to herein as blue and red light, respectively. Accordingly, as the amount of chlorophyll in the plant tissue decreases over time during senescence, the relative absorbance of visual light will decrease.
  • The apparatus and methodologies described herein utilize radiometric crop sensors that measure the reflectance and absorbance of one or more frequencies of light by plant tissues. There are two types of radiometric sensors, active sensors which use one or more internal light sources to illuminate the plants being evaluated, and passive sensors which use ambient light only. A preferred sensor is the GreenSeeker® RT100 sold by NTech Industries (Ukiah, Calif.) a Trimble Navigation Limited Company, Sunnyvale, Calif. While the sensors disclosed in the preferred embodiments utilize active light sources, so-called passive sensors that utilize ambient light may also be used. Such sensors may be adapted to use visual light, most commonly the red and NIR wavelengths to generate information about the conditions of plants. A commonly used index in assessing crop conditions is the normalized difference vegetative index (NDVI). The NDVI was developed during early use of satellites to detect living plants remotely from outer space. The index is defined as

  • % NDVI=(NIR−V)/(NIR+V)×100
  • where NIR is the reflectance in the NIR range and V is the reflectance in the visual range. Preferred sensors for use with the present invention generate an output that is in NDVI units.
  • The apparatus and methodologies described herein make advantageous use of the Global Positioning Satellite (GPS) system to determine and record the positions of fields, plots within the fields and plants within the plots and to correlate collected plant condition data. Although the various methods and apparatus will be described with particular reference to GPS satellites, it should be appreciated that the teachings are equally applicable to systems which utilize pseudolites or a combination of satellites and pseudolites. Pseudolites are ground- or near ground-based transmitters which broadcast a pseudorandom (PRN) code (similar to a GPS signal) modulated on an L-band (or other frequency) carrier signal, generally synchronized with GPS time. Each transmitter may be assigned a unique PRN code so as to permit identification by a remote receiver. The term “satellite”, as used herein, is intended to include pseudolites or equivalents of pseudolites, and the term GPS signals, as used herein, is intended to include GPS-like signals from pseudolites or equivalents of pseudolites.
  • It should be further appreciated that the methods and apparatus of the present invention are equally applicable for use with the GLONASS and other satellite-based positioning systems. The GLONASS system differs from the GPS system in that the emissions from different satellites are differentiated from one another by utilizing slightly different carrier frequencies, rather than utilizing different pseudorandom codes. As used herein and in the claims which follow, the term GPS should be read as indicating the United States Global Positioning System as well as the GLONASS system and other satellite- and/or pseudolite-based positioning systems.
  • FIG. 1 illustrates an agricultural field 10 which has been planted in accordance with the methods described herein. A planter equipped with a high-precision GPS receiver results in the development of a digital map of the agricultural field 10. The map defined through this operation may become the base map and/or may become a control feature for a machine guidance and/or control system to be discussed in further detail below. The map should be of sufficient resolution so that the precise location of a vehicle within the area defined by the map can be determined to a few inches with reference to the map. Currently available GPS receivers, for example as the ProPak®-V3produced by NovAtel Inc. (Calgary, Alberta, Canada) are capable of such operations.
  • For the operation, a tractor or other vehicle is used to tow a planter across the field 10. The planter is fitted with a GPS receiver which receives transmissions from GPS satellites and a reference station. Also on-board the planter is a monitoring apparatus which records the position of seeds as they are planted by the planter. In other words, using precise positioning information provided by the GPS receiver and an input provided by the planter, the monitoring apparatus records the location at which each seed is deposited by the planter in the field 10.
  • As the tractor and planter proceeds across field 10 to plant various rows of seeds or crops, a digital map is established wherein the location of each seed planted in field 10 is stored. Such a map or other data structure which provides similar information may be produced on-the-fly as planting operations are taking place. Alternatively, the map may make use of a previously developed map (e.g., one or more maps produced from earlier planting operations, etc.). In such a case, the previously stored map may be updated to reflect the position of the newly planted seeds. Indeed, in one embodiment a previously stored map is used to determine the proper location for the planting of the seeds/crops.
  • In such an embodiment, relevant information stored in a database, for example the location of irrigation systems and/or the previous planting locations of other crops, may be used to determine the location at which the new crops/seeds should be planted. This information is provided to the planter (e.g., in the form of radio telemetry data, stored data, etc.) and is used to control the seeding operation. As the planter (e.g., using a conventional general purpose programmable microprocessor executing suitable software or a dedicated system located thereon) recognizes that a planting point is reached (e.g., as the planter passes over a position in field 10 where it has been determined that a seed should be planted), an onboard control system activates a seed planting mechanism to deposit the seed. The determination as to when to make this planting is made according to a comparison of the planter's present position as provided by the GPS receiver and the seeding information from the database. For example, the planting information may accessible through an index which is determined according to the planter's current position (i.e., a position-dependent data structure). Thus, given the planter's current location, a look-up table or other data structure can be accessed to determine whether a seed should be planted or not.
  • In cases where the seeding operation is used to establish the digital map, the seeding data need not be recorded locally at the planter. Instead, the data may be transmitted from the planter to some remote recording facility (e.g., a crop research station facility or other central or remote workstation location) at which the data may be recorded on suitable media. The overall goal, at the end of the seeding operation, is to have a digital map which includes the precise position (e.g., to within a few inches) of the location of each seed planted. As indicated, mapping with the GPS technology is one means of obtaining the desired degree of accuracy.
  • The development of novel varieties of crops typically involves growing a large number of varieties side-by-side in research fields in what are sometimes called preliminary yield trials. A common arrangement is to plant each individual variety in a plot that includes a sufficient number of plants to generate valid data, leaving space between plots for access by workers and field equipment. In a preferred embodiment, the field 10 is divided into a plurality of rectangular plots 12 divided by unplanted rows 14 and 16. To provide a standard or check for the determination of relative maturity, check plots 18 are included. The check plots 18 are planted with varieties of known maturity to be used as a comparison for the relative maturity of plants in the research plots. Preferably, a number of different check varieties are planted to provide a range of maturities to span the expected maturities of the plants in the research plots.
  • In a preferred embodiment, the field 10 is organized in non-replicated blocks of 2122 plots 12. Most of the plots are planted with experimental varieties of similar parentage and a smaller number of the plots are planted with a selection of different check varieties (FIGS. 7 and 8). Each plot 12 has one row with a planting density of 10 seeds per foot and is approximately 7 feet long. The unplanted rows 14 and 16 provide approximately three feet of walkway/vehicle access. It is common to plant experimental varieties having an expected range of maturities covering no more than three maturity zones so that all plants will reach maturity within approximately a one-month period. For soybeans, maturity is generally defined as plants having dropped all leaves and with 95% of pods having a mature brown color.
  • As result of the mapping operation conducted during planting, the latitude and longitude location of each plant in the field 10 is converted into a reference area within each of the plots 12 in the digital map of the field 10, resulting in a map 20 as represented in FIG. 2.
  • As a significant number of the plants in the field 10 reach senescence, the plants in the field 10 are scanned using a radiometric sensor equipped with a high-precision GPS receiver. Each data point collected from the radiometric sensor, which preferably is in the form of an NDVI index, includes latitude and longitude information. The data points are correlated to the location of the plants on the map 20, including the check plots 18. The radiometric data collected from the check plots 18 is used to calibrate the sensor and the collected data from the experimental plots 12. The NDVI data for each plant is then assigned a relative maturity value based on its relationship to the NDVI data from the check plots 18. In a preferred embodiment, the relative maturity data is passed to a comprehensive database of other characteristics of the experimental varieties.
  • One method of moving the radiometric sensor over the field 10 is manually. A worker simply carries the sensor through the field, holding it above each plant in each plot. A more efficient way of taking the radiometric data is to mount one or more radiometric sensors on a vehicle that then travels the field 10, collecting data on the fly. In a preferred embodiment, a vehicle used for detasseling corn, such as a PDF 450G detassler (Product Design and Fabrication, Cedar Rapids, Iowa) is modified to create a sensor transport 22 (FIGS. 3 and 4) to carry a pair of radiometric sensors 24 and 26. A forward horizontal tool bar 28 of the sensor transport 22 is mounted transversely of the direction of travel of the transport 22. The sensors 24 and 26 are mounted on the tool bar 28, the vertical position of which is adjustable to position the sensors 24 and 26 the desired reading distance above the plant canopy. In the case of the GreenSeeker® RT100 sensor, the manufacturer recommends that the sensor be positioned between 32 inches and 48 inches above the plant canopy, typically about 30 inches for soybeans.
  • Applications of Phenotypic Data
  • The present invention provides methods for generating high through put phenotype data that can be used to characterize plants. This phenotypic data also can be employed in various types of plant breeding and selection including marker assisted breeding. This data can be utilized in analyzing seeds or plant tissue material for genetic characteristics that associate with the relative maturity or stay green phenotype of the individual plants or plants which are genetically related. The genetic characteristics associated with the plant evidencing the presences or absences of the phenotype can be determined by analytical methods. These methods can use markers or genomics data for the detection of chemical, allelic, polymorphic, base pair or amino acid differences.
  • Samples prepared from the phenotyped seeds or plant materials can be used to establish the desirable genetic attributes that are associated with the selected genotype. Once the selected genotype is identified, it can be used for plant selection thorough out the breeding or selection process. In one embodiment, the methods and devices of the present invention can be used in a breeding program to select plants or seeds having a desired trait, whether genetically modified or native trait or marker genotype associated with the phenotype detected with the high through put relative maturity or stay green data. The methods of the present invention can be used in combination with any breeding methodology and can be used to select a single generation or to select multiple generations or plants or seeds. The choice of breeding method depends on the mode of plant reproduction, the heritability of the trait(s) being improved, and the type of cultivar used (hybrid, inbred, varietal). It is further understood that this device produces phenotypic data for cultivars which can be utilized in a breeding program, in conjunction with selection on any number of other parameters such as emergence vigor, vegetative vigor, stress tolerance, disease resistance, branching, flowering, seed set, seed size, seed density, standability, and threshability etc. to make breeding selections or decisions.
  • In a particular embodiment, the methods of the present invention are used to determine the genetic characteristics of seeds or plants in a marker-assisted breeding program. Such methods allow for improved marker-assisted breeding programs wherein direct seed or tissue sampling can be conducted while maintaining the identity of individuals from the field. As a result, the marker-assisted breeding program results in a “high-throughput” platform wherein a subpopulation of seeds/plants having a desired trait, marker or genotype can be more effectively selected and bulked in a shorter period of time, with less field and labor resources required.
  • Example 1
  • Two fields were planted on a farm located near Ames, Iowa. Field A was planted on May 21. Field A comprised 21 acres (1920 feet by 480 feet) and was divided into 36,864 plots as shown in FIG. 5. Check variety S08-M8 was planted in rows 1 and 2 and 49 and 50, and check varieties S15-R2, S21-N6, S25-B9 and S30-F5 were planted in rows 2-6 and 51-54, respectively. Experimental varieties were planted in the other plots. Specifically, experimental varieties A-N were planted in rows 7-20, respectively, and across range 1 (FIG. 7). Field C was planted June 17 the same year. Field C comprised 20 acres (1800 feet by 480 feet) and was divided into 34,560 plots as shown in FIG. 6. Check varieties S15-R2, S21-N6, S25-B9 and 530-F5 were planted in rows 1-4 and 49-52, respectively. Experimental varieties were planted in the other plots. Specifically, experimental varieties O-Z and A1-D1 were planted in rows 5-20, respectively, and across rangel (FIG. 8). The check varieties covered maturity groups 0.8-3, as set out in Tables 1 and 2.
  • TABLE 1
    Check Varieties used in Field A
    # Variety Maturity Group
    1 S08-M8 0.8
    2 S15-R2 1.5
    3 S21-N6 2.0
    4 S25-B9 2.5
    5 S30-F5 3.0
  • TABLE 2
    Check Varieties used in Field C
    # Variety Maturity Group
    1 S15-R2 1.5
    2 S21-N6 2.0
    3 S25-B9 2.5
    4 S30-F5 3.0
  • The seed was planted at a density of 10 seeds per foot and a row width 30 inches and a GPS map of the seed planted in the fields was created at the time of planting. Data was collected from Field A on September 2, and from Field C on September 23 and 26 of the same year. Data was collected using the PDF 450G detasseling machine, modified as shown in FIGS. 3 and 4. The speed of the detassler was approximately 3 mph and it was driven transverse to the rows. The GreenSeeker® RT100 sensor was set to collect data at 50 msec (20 data points per second) to match the GPS data stream from the NovAtel ProPak®-V3 device. To reduce row to row sample contamination, 15 inches of each 30 inch row was considered the target collection area. At 3 mph, 15 inches is covered in 0.28 sec, giving 5.7 data points per plot, which was deemed an acceptable number of data points per plot. The data output of the GPS and radiometric crop sensor taken from Field A is set out in Table 3.
  • TABLE 3
    Data Output of the Crop Sensor for Plots 1-20, Field A
    Time Record Latitude Longitude Plot NDVI
    12:04:53 183 −93.49205711 42.12766835 1 0.819
    12:04:53 184 −93.49205654 42.12766844 1 0.846
    12:04:53 185 −93.49205606 42.1276685 1 0.773
    12:04:53 186 −93.49205563 42.12766852 1 0.614
    12:04:53 187 −93.49205477 42.1276687 1 0.549
    12:04:53 188 −93.49205425 42.12766869 1 0.622
    12:04:53 189 −93.49205375 42.1276687 1 0.593
    12:04:53 190 −93.49205319 42.12766871 1 0.517
    12:04:53 197 −93.49204749 42.12766879 2 0.246
    12:04:54 198 −93.49204689 42.12766877 2 0.267
    12:04:54 199 −93.49204544 42.1276688 2 0.242
    12:04:54 200 −93.4920447 42.12766891 2 0.382
    12:04:54 201 −93.49204396 42.12766893 2 0.413
    12:04:54 202 −93.49204334 42.12766895 2 0.502
    12:04:54 208 −93.49203788 42.1276687 3 0.598
    12:04:54 209 −93.49203712 42.12766865 3 0.755
    12:04:54 210 −93.49203632 42.1276687 3 0.810
    12:04:54 211 −93.49203466 42.12766882 3 0.757
    12:04:54 212 −93.49203381 42.12766891 3 0.755
    12:04:55 217 −93.49202869 42.12766931 4 0.708
    12:04:55 218 −93.49202768 42.12766924 4 0.900
    12:04:55 219 −93.49202592 42.1276692 4 0.824
    12:04:55 220 −93.49202502 42.12766913 4 0.795
    12:04:55 225 −93.49201984 42.12766903 5 0.780
    12:04:55 226 −93.49201904 42.12766902 5 0.623
    12:04:55 227 −93.4920181 42.1276689 5 0.912
    12:04:55 228 −93.49201613 42.12766894 5 0.904
    12:04:56 233 −93.49201096 42.12766923 6 0.894
    12:04:56 234 −93.49200991 42.1276691 6 0.855
    12:04:56 235 −93.49200799 42.12766927 6 0.807
    12:04:56 236 −93.49200706 42.12766925 6 0.840
    12:04:56 237 −93.49200631 42.12766935 6 0.842
    12:04:56 241 −93.49200176 42.12766948 7 0.876
    12:04:56 242 −93.49200122 42.12766941 7 0.822
    12:04:56 243 −93.49200017 42.12766952 7 0.846
    12:04:56 244 −93.49199914 42.12766941 7 0.848
    12:04:56 245 −93.49199817 42.12766927 7 0.892
    12:04:57 246 −93.4919973 42.12766928 7 0.838
    12:04:57 251 −93.49199138 42.12766927 8 0.784
    12:04:57 252 −93.49199052 42.12766915 8 0.843
    12:04:57 253 −93.49198978 42.12766919 8 0.761
    12:04:57 254 −93.49198897 42.12766926 8 0.698
    12:04:57 260 −93.49198176 42.12766923 9 0.852
    12:04:57 261 −93.49198066 42.12766927 9 0.821
    12:04:58 262 −93.49197951 42.12766931 9 0.835
    12:04:58 263 −93.49197741 42.12766932 9 0.829
    12:04:58 268 −93.49197159 42.1276692 10 0.881
    12:04:58 269 −93.49197042 42.12766912 10 0.875
    12:04:58 270 −93.49196928 42.12766912 10 0.902
    12:04:58 275 −93.49196294 42.12766905 11 0.730
    12:04:58 276 −93.49196213 42.1276691 11 0.526
    12:04:58 277 −93.49196133 42.12766906 11 0.494
    12:04:59 278 −93.4919606 42.12766907 11 0.473
    12:04:59 279 −93.49195872 42.12766902 11 0.548
    12:04:59 284 −93.49195357 42.12766911 12 0.719
    12:04:59 285 −93.49195255 42.12766917 12 0.669
    12:04:59 286 −93.49195171 42.12766907 12 0.599
    12:04:59 287 −93.49195044 42.12766914 12 0.733
    12:04:59 288 −93.49194964 42.12766905 12 0.735
    12:04:59 289 −93.49194964 42.12766905 12 0.719
    12:04:59 292 −93.4919446 42.12766914 13 0.800
    12:04:59 293 −93.49194387 42.12766917 13 0.871
    12:05:00 294 −93.49194323 42.12766925 13 0.767
    12:05:00 295 −93.4919418 42.12766933 13 0.851
    12:05:00 296 −93.4919408 42.12766935 13 0.827
    12:05:00 301 −93.49193573 42.12766943 14 0.822
    12:05:00 302 −93.49193489 42.12766941 14 0.799
    12:05:00 303 −93.49193283 42.12766921 14 0.873
    12:05:00 304 −93.49193176 42.12766912 14 0.875
    12:05:01 310 −93.4919259 42.12766878 15 0.799
    12:05:01 311 −93.49192359 42.1276688 15 0.870
    12:05:01 312 −93.49192256 42.1276688 15 0.868
    12:05:01 318 −93.49191677 42.12766888 16 0.786
    12:05:01 319 −93.49191486 42.12766886 16 0.799
    12:05:01 320 −93.49191381 42.12766882 16 0.762
    12:05:01 321 −93.49191295 42.12766883 16 0.765
    12:05:02 327 −93.49190737 42.12766875 17 0.740
    12:05:02 328 −93.49190556 42.12766879 17 0.771
    12:05:02 329 −93.49190475 42.12766875 17 0.721
    12:05:02 330 −93.49190392 42.12766887 17 0.792
    12:05:02 335 −93.49189769 42.1276689 18 0.772
    12:05:02 336 −93.49189683 42.12766892 18 0.809
    12:05:02 337 −93.49189599 42.1276688 18 0.865
    12:05:02 338 −93.49189517 42.127669 18 0.845
    12:05:03 343 −93.49188915 42.12766882 19 0.682
    12:05:03 344 −93.49188824 42.12766885 19 0.724
    12:05:03 345 −93.49188738 42.12766884 19 0.833
    12:05:03 346 −93.49188647 42.12766888 19 0.685
    12:05:03 352 −93.49187979 42.12766905 20 0.636
    12:05:03 353 −93.49187893 42.12766902 20 0.531
    12:05:03 354 −93.49187795 42.127669 20 0.555
    12:05:03 355 −93.4918763 42.12766887 20 0.399
  • The average NDVI for the check and experimental varieties is set out in Table 4.
  • TABLE 4
    Average NDVI for Each Variety in Plots 1-20, Field A
    Avg.
    Variety NDVI
    S08-M8 0.667
    S08-M8 0.342
    S15-R2 0.735
    S21-N6 0.807
    S25-B9 0.805
    S30-F5 0.848
    A 0.854
    B 0.772
    C 0.834
    D 0.886
    E 0.554
    F 0.696
    G 0.823
    H 0.842
    I 0.846
    J 0.778
    K 0.756
    L 0.823
    M 0.731
    N 0.530
  • The data output of the GPS and radiometric crop sensor taken from Field C is set out in Table 5.
  • TABLE 5
    Data Output of the Crop Sensor for Plots 1-20, Field C
    Time Record Longitude Latitude Row NDVI1
    11:58:31 305 −93.4921 42.12471 1 0.230
    11:58:31 306 −93.4921 42.12471 1 0.208
    11:58:31 307 −93.4921 42.12471 1 0.252
    11:58:31 308 −93.4921 42.12471 1 0.245
    11:58:31 309 −93.4921 42.12471 1 0.195
    11:58:31 310 −93.4921 42.12471 1 0.262
    11:58:31 311 −93.4921 42.12471 1 0.287
    11:58:31 312 −93.4921 42.12471 1 0.219
    11:58:32 318 −93.4921 42.12471 2 0.244
    11:58:32 319 −93.4921 42.12471 2 0.219
    11:58:32 320 −93.4921 42.12471 2 0.209
    11:58:32 321 −93.4921 42.12471 2 0.253
    11:58:32 322 −93.4921 42.12471 2 0.253
    11:58:32 323 −93.4921 42.12471 2 0.297
    11:58:32 330 −93.4921 42.12471 3 0.307
    11:58:33 331 −93.492 42.12471 3 0.425
    11:58:33 332 −93.492 42.12471 3 0.276
    11:58:33 333 −93.492 42.12471 3 0.270
    11:58:33 334 −93.492 42.12471 3 0.293
    11:58:33 335 −93.492 42.12471 3 0.383
    11:58:33 342 −93.492 42.12471 4 0.268
    11:58:33 343 −93.492 42.12471 4 0.381
    11:58:33 344 −93.492 42.12471 4 0.744
    11:58:33 345 −93.492 42.12471 4 0.778
    11:58:33 346 −93.492 42.12471 4 0.800
    11:58:34 352 −93.492 42.12471 5 0.726
    11:58:34 353 −93.492 42.12471 5 0.738
    11:58:34 354 −93.492 42.12471 5 0.725
    11:58:34 355 −93.492 42.12471 5 0.777
    11:58:34 356 −93.492 42.12471 5 0.485
    11:58:34 357 −93.492 42.12471 5 0.556
    11:58:35 364 −93.492 42.12471 6 0.479
    11:58:35 365 −93.492 42.12471 6 0.395
    11:58:35 366 −93.492 42.12471 6 0.383
    11:58:35 367 −93.492 42.12471 6 0.729
    11:58:35 368 −93.492 42.12471 6 0.813
    11:58:35 369 −93.492 42.12471 6 0.715
    11:58:35 376 −93.492 42.12471 7 0.742
    11:58:35 377 −93.492 42.12471 7 0.506
    11:58:35 378 −93.492 42.12471 7 0.344
    11:58:36 379 −93.492 42.12471 7 0.170
    11:58:36 380 −93.492 42.12471 7 0.255
    11:58:36 381 −93.492 42.12471 7 0.208
    11:58:36 388 −93.492 42.12471 8 0.157
    11:58:36 389 −93.492 42.12471 8 0.216
    11:58:36 390 −93.492 42.12471 8 0.222
    11:58:36 391 −93.492 42.12471 8 0.217
    11:58:36 392 −93.492 42.12471 8 0.293
    11:58:36 393 −93.492 42.12471 8 0.215
    11:58:36 394 −93.492 42.12471 9 0.270
    11:58:37 395 −93.492 42.12471 9 0.253
    11:58:37 396 −93.492 42.12471 9 0.294
    11:58:37 397 −93.492 42.12471 9 0.241
    11:58:37 398 −93.492 42.12471 9 0.214
    11:58:37 399 −93.492 42.12471 9 0.184
    11:58:37 400 −93.492 42.12471 9 0.294
    11:58:37 406 −93.492 42.12471 10 0.256
    11:58:37 407 −93.492 42.12471 10 0.263
    11:58:37 408 −93.492 42.12471 10 0.322
    11:58:37 409 −93.492 42.12471 10 0.268
    11:58:37 410 −93.492 42.12471 10 0.270
    11:58:38 411 −93.492 42.12471 10 0.325
    11:58:38 417 −93.492 42.12471 11 0.284
    11:58:38 418 −93.492 42.12471 11 0.330
    11:58:38 419 −93.492 42.12471 11 0.270
    11:58:38 420 −93.492 42.12471 11 0.340
    11:58:38 421 −93.492 42.12471 11 0.437
    11:58:38 422 −93.492 42.12471 11 0.420
    11:58:39 427 −93.492 42.12471 12 0.489
    11:58:39 428 −93.492 42.12471 12 0.426
    11:58:39 429 −93.492 42.12471 12 0.341
    11:58:39 430 −93.492 42.12471 12 0.263
    11:58:39 431 −93.492 42.12471 12 0.218
    11:58:39 436 −93.492 42.12471 13 0.247
    11:58:39 437 −93.492 42.12471 13 0.199
    11:58:39 438 −93.492 42.12471 13 0.246
    11:58:39 439 −93.492 42.12471 13 0.248
    11:58:39 440 −93.492 42.12471 13 0.196
    11:58:39 441 −93.492 42.12471 13 0.250
    11:58:40 446 −93.492 42.12471 14 0.235
    11:58:40 447 −93.492 42.12471 14 0.292
    11:58:40 448 −93.492 42.12471 14 0.256
    11:58:40 449 −93.492 42.12471 14 0.263
    11:58:40 450 −93.492 42.12471 14 0.216
    11:58:40 451 −93.4919 42.12471 14 0.287
    11:58:40 457 −93.4919 42.12471 15 0.358
    11:58:40 458 −93.4919 42.12471 15 0.334
    11:58:41 459 −93.4919 42.12471 15 0.331
    11:58:41 460 −93.4919 42.12471 15 0.331
    11:58:41 461 −93.4919 42.12471 15 0.268
    11:58:41 467 −93.4919 42.12471 16 0.372
    11:58:41 468 −93.4919 42.12471 16 0.264
    11:58:41 469 −93.4919 42.12471 16 0.250
    11:58:41 470 −93.4919 42.12471 16 0.247
    11:58:41 471 −93.4919 42.12471 16 0.268
    11:58:41 472 −93.4919 42.12471 16 0.195
    11:58:42 480 −93.4919 42.12471 17 0.225
    11:58:42 481 −93.4919 42.12471 17 0.238
    11:58:42 482 −93.4919 42.12471 17 0.232
    11:58:42 483 −93.4919 42.12471 17 0.204
    11:58:42 484 −93.4919 42.12471 17 0.200
    11:58:42 485 −93.4919 42.12471 17 0.199
    11:58:43 491 −93.4919 42.12471 18 0.198
    11:58:43 492 −93.4919 42.12471 18 0.198
    11:58:43 493 −93.4919 42.12471 18 0.176
    11:58:43 494 −93.4919 42.12471 18 0.182
    11:58:43 495 −93.4919 42.12471 18 0.287
    11:58:43 501 −93.4919 42.12471 19 0.325
    11:58:43 502 −93.4919 42.12471 19 0.198
    11:58:43 503 −93.4919 42.12471 19 0.298
    11:58:43 504 −93.4919 42.12471 19 0.298
    11:58:43 505 −93.4919 42.12471 19 0.259
    11:58:43 506 −93.4919 42.12471 19 0.244
    11:58:44 511 −93.4919 42.12471 20 0.135
    11:58:44 512 −93.4919 42.12471 20 0.186
    11:58:44 513 −93.4919 42.12471 20 0.220
    11:58:44 514 −93.4919 42.12471 20 0.331
    11:58:44 515 −93.4919 42.12471 20 0.332
  • The average NDVI for the check and experimental varieties is set out in Table 6.
  • TABLE 6
    Average NDVI for Each Variety in Plots 1-20, Field C
    Avg.
    Variety NDVI
    S15-R2 0.237
    S21-N6 0.246
    S25-B9 0.326
    S30-F5 0.594
    O 0.668
    P 0.586
    Q 0.371
    R 0.220
    S 0.250
    T 0.284
    U 0.347
    V 0.347
    W 0.231
    X 0.258
    Y 0.324
    Z 0.266
    A1 0.216
    B1 0.208
    C1 0.270
    D1 0.241
  • The NDVI data is correlated to maturity groups by a graph of relative maturity value (RMT_N), determined by the average NDVI for each check variety, versus NDVI. The graph from Field A is shown in FIG. 9 and the graph from Field C is shown in FIG. 10. Personal observation indicated the varieties mature at scanning were the maturity group late 1.0 in Field A and maturity group 1.7 in Field C. The data shows the final average maturity of field A was a maturity of 2.2 and field C was 2.0.
  • Example 2 Experiment Corn Staygreen Phenotyping Methodology Trial
  • An experiment using the devices shown in FIGS. 11 a and 11 b were employed on maize to detect the staygreen of plants in trials. Staygreen is a function of plant health, plant stress, insect and disease pressures on the plant These stay green trials were maize inbred trials and maize hybrids trials. The hybrid trials had 8, 30 inch rows, 40 foot long plots. The data was collected with canopy readings taken between rows four and five, of all 65 plots. Below canopy readings taken between rows four and five, on the first set of 16 plots.
  • The inbred trial had 1, 30 inch row, 20 foot long plots. The above canopy readings taken over the row, for the first 100 plots. In all the trials, five readings, one per week, were taken. Some frost damage occurred between the 4th reading and last collection date. Average staygreen readings were taken as visual readings and active sensor readings as shown in FIGS. 12 a and 12 b.
  • In the Inbred Trial a 50% Visual Staygreen was a Good Indicator for Defining the Center of Three Week Stable Scanning Period.
  • The graphs in FIGS. 13 a-g depict the correlation of the staygreen visual and active sensor readings across time. The 60% for hybrids and the 50% staygreen for inbreds is a good indicator for peak correlation of visual phenotype detection with the active sensor readings. In this experiment at peak data collection date the sensor was employed to identify nine of the top ten staygreen hybrids ranked by visual selection.
  • This phenotypic data can be used in a trait mapping experiment to develop genetic characteristics that associate with the phenotype of staygreen. This high through put automated data collection can be utilized in indentifying markers that associate with staygreen phenotypes. The phenotypic data can then be employed in the development of a marker assisted breeding programs. This data can also be captured across time to identify the most critical time for silage production or the prime harvesting timeframes for inbreds or hybrids. This data can be sent from the device to a remote location for analysis of the data. The method of the present invention include capturing the sensor data and analyzing the data for use in phenotyping, marker validation and selection, marker assisted breeding, selections, and producing breeding programs with inbreds and hybrid combination and the seeds and plants and progeny thereof that have the phenotypic traits introgressed through use of the breeding material mapped or selected for relative maturity, staygreen, health, disease, stress, vigor and the like.
  • Example 3 Sudden Death Syndrome
  • The seed was planted at a density of 10 seeds per foot and a row width 30 inches and a GPS map of the seed planted in the fields was created at the time of planting. Data was to be collected from the soybean field for determination of relative maturity. However, prior to the time period for data collection the field was highly impacted by Sudden Death Syndrome (SDS). This disease causes plants particularly those in the R4-R6 stage to die prematurely. Premature death of part of the plants in the field most susceptible to Sudden Death Syndrome would skew any relative maturity ratings. It was determined that data will be collected using the PDF 450G detasseling machine, modified as shown in FIGS. 3 and 4. The speed of the detassler will be approximately 3 mph and driven transverse to the rows. The GreenSeeker® RT100 sensor will initially be set to collect data at 50 msec (20 data points per second) to match the GPS data stream from the NovAtel ProPak®-V3 device. To reduce row to row sample contamination, 15 inches of each 30 inch row will be considered the target collection area. At 3 mph, 15 inches is covered in 0.28 sec, giving 5.7 data points per plot, which is deemed an acceptable number of data points per plot. However, by employing two sensors per row at a slightly lower rate, 63 Hz, 4.5 data points per second from 2 sensors provides 9 data points per plot. Instead of collecting data to determine the relative maturity of the plants, the data is being collected to determine which plants in the plots are susceptible to SDS and which are more tolerant. Because SDS does not impact all areas of a field evenly some susceptible plants in less impacted areas may not be identified as susceptible, but due to the intense pressure of SDS in the fields most susceptible plots will be readily identified. The data output of the GPS and radiometric crop sensor should allow selection of plants in plots that are less susceptible to the fungal disease SDS. These plants can then be used in further breeding, selection, and development programs including marker assisted breeding development programs.
  • The foregoing description comprises illustrative embodiments of the present inventions. The foregoing embodiments and the methods described herein may vary based on the ability, experience, and preference of those skilled in the art. Merely listing the steps of the method in a certain order does not necessarily constitute any limitation on the order of the steps of the method. The foregoing description and drawings merely explain and illustrate the invention, and the invention is not limited thereto, except insofar as the claims are so limited. Those skilled in the art who have the disclosure before them will be able to make modifications and variations therein without departing from the scope of the invention

Claims (7)

1. A method for measuring the relative maturity of a plurality of plots of diverse varieties of plants growing in a field, comprising the steps of:
(a) planting seed of a selected variety of the plants in a selected plot and recording the position of the variety planted in each plot;
(b) growing the plants to a selected maturity stage;
(c) collecting radiometric sensor data from each plot corresponding to the maturity of plants in the plot; and
(d) analyzing the sensor data to generate a measure of the maturity of plants in a plot.
2. The method of claim 1, wherein GPS is used to record the location of seed planted with the plots.
3. The method of claim 2, wherein GPS is used to correlate the sensor data to the location of seeds planted in the plots.
4. The method of claim 1, wherein plants of varieties of known maturity are included in the plots as check plants.
5. The method of claim 1, wherein the sensor is mounted on a vehicle and supported above the plants.
6. A method of plant breeding, comprising the steps of:
(a) planting seed in a plot to produce plants;
(b) growing the plants to a selected maturity stage;
(c) collecting radiometric sensor data from the plot corresponding to the maturity of plants in the plot;
(d) analyzing the sensor data to generate a measure of the maturity of plants in a plot; and
(e) using the measure of maturity as a basis for selecting between plants in a plant breeding program.
7. A system for phenotyping plants, the system comprising:
(a) plants comprising a plurality of micro-plots of one or more plants;
(b) a sensing apparatus;
(c) a vehicle mounting the sensing apparatus for transport of the sensing apparatus over the row of plants;
(d) a data signal generated by the sensing apparatus corresponding to the evidence selected from the group consisting of relative maturity, staygreen, health, vigor, disease, stress, biomass of the plant or plants in the single micro-plot; and
(f) a computer for receiving and storing the data signal associated with each micro-plot.
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