2.1. Study Area
The winter pea field experiments were located at the Washington State University’s Spillman Agronomy Farm near Pullman, Washington, USA (46°41′54.71″ N; 117° 8′45.22″ W). Data were collected at 365, 784, 1268, 1725, and 1948 accumulated degree days (ADD), corresponding to 15 May, 30 May, 19 June, 5 July, and 16 July 2018, respectively. ADD were calculated at a 0 °C base temperature [
36] from 1 May 2018. The winter pea experiments from the United States Department of Agriculture (USDA) Agricultural Research Service winter pea breeding program were: 1821 (Austrian Winter Pea Advanced Yield Trial), 1821cc (Cover Crop Winter Pea Advanced Yield Trial), 1822 (Food Quality Winter Pea Advanced Yield Trial), and 1823 (Food Quality Winter Pea Preliminary Yield Trial). The experimental design of each trial was a randomized complete block design with three replicates. Experiments 1821cc, 1821, 1822, and 1823 had 5, 10, 20, and 20 entries, respectively. The plot size was approximately 1.5 m × 5.0 m (
Figure 1a). The planting date was on 11 October 2017, and seedlings emerged 15 to 30 days later. In all the winter pea experiments data collected included days to 50% flowering (F50), leaf type: normal (
Af) or semi-leafless (
af), days to physiological maturity (PM), number of the first flowering node (FN), and seed yield (SY); additionally, in experiments 1821 and 1821cc, AGBM data were collected at flowering (1268 ADD). Flowering, an important trait evaluated in breeding programs, refers to the appearance of reproductively receptive flowers on plants. During this time, pollen is transferred to the stigma, the ovules are fertilized, and seed development commences. A plot is ‘flowering’ when 50% of the plants have flowers that are at anthesis. For AGBM estimation, 50% of each plot was harvested and fresh weight was measured. In order to evaluate the accuracy of the DSMs, at 1268 ADD ground truth canopy height (CH
GT) measurements were taken from 18 randomly selected plots (3 plants/plot) within the field area of winter pea experiments.
The spring pea field was located in the Plant Materials Center of the USDA, Washington, USA (46°43′12.83″ N; 117° 8′33.88″ W). The plant materials in this experiment were the USDA Pea Single Plant Derived Core Collection (PSP), a genome wide association mapping population that has been previously phenotyped and genotyped [
37]. The 307 accessions were planted in a randomized complete block design with three replications. This experiment was planted on 14 May 2018, plots consisted of two, 1.2 m long rows (
Figure 1b). Once the plants reached 50% flowering, CH
GT, lodging, and leaf type were measured, and AGBM (as total dry weight) was assessed through destructive sampling of the entire plot. Lodging was measured as the ratio of the height of the canopy divided by the total length of the plant, i.e., the closer the ratio is to 1.0, the more erect (less lodged) the plants are. Data collection occurred on 28 June (1231 ADD), 5 July (1424 ADD), and 12 July (1648 ADD). ADD was calculated from the planting date.
2.2. UAS Data Collection
In the winter and spring pea experiments, a total of 10 GCPs were uniformly distributed over each experimental area, including the field edges to minimize the planimetry error [
38]. A marker stake was placed at each GCP location and remained in place throughout the season. Prior to each flight, boards (0.8 m × 0.5 m) that could be seen in the resulting UAS images were placed at each GCP position. The coordinates of each point were recorded at the end of the experiment with a RTK system based on SPS850 Global Navigation Satellite System receivers from Trimble Inc. (California, USA), which integrates a 450–900 MHz transmitter/receiver radio and a 72-channel L1/L2/L2C/L5/GLONASS GPS receiver.
RGB data was collected with a DJI-Phantom 4 Pro (Shenzhen, China) using its original 20 MP resolution, 25.4 mm CMOS camera with lens characteristics of 84° field of view and 8.8 mm/24 mm (35 mm format equivalent). DJI-phantom 4 Pro is powered with 6000 mAh LiPo 2S battery and the speed during data acquisition was 2 m/s; it works with the Global Navigation Satellite System (GNSS: GPS and GLONASS constellations) with average horizontal and vertical accuracies of ~0.5 m and ~1.5 m, respectively. The high-density data were collected in a double grid pattern with 90% overlap (both directions) at 20 m AGL (0.005 m of ground sample distance/GSD) to generate high accuracy digital surface models. As high-density images were collected from different angles (more points of view for each object on the field), it was expected that the process would improve the quality of the 3D reconstruction. The multispectral information was captured using a Double 4K camera (Sentera LLC, Minneapolis, USA) of 59 × 40.9 × 44.5 mm dimensions with 12.3 MP (0.005 m GSD) resolution of five spectral bands. The central wavelength and full-width half maximum data for R, G, B, red edge (RE), and NIR spectral bands were 650 nm and 64 nm, 548 nm and 44 nm, 446 nm and 52 nm, 720 nm and 39 nm, and 839 and 20 nm, respectively. This sensor was mounted on an ATI-AgBOTTM (ATI LLC., Oregon, USA) quadcopter with 1012 400 kv motor and dual 6000 mAh batteries; its positioning system is 3DR uBlox GPS (UAV Systems International, Las Vegas, USA) that works with a 3 V lithium rechargeable battery at 5 Hz update rate and a low noise regulator of 3.3 V. The multispectral data were collected in a single grid pattern with 80% frontal overlap and 70% side overlap, also at 20 m AGL. A white reference panel (0.25 m × 0.25 m; Spectralon Reflectance Target, CSTM-SRT-99-120) (Spectra Vista Cooperation, New York, USA) was placed on the field for radiometric correction during image processing.
2.4. UAS-Based Imagery Analysis
Pix4DTM software was used to create the mosaics and DSM from both sensors (RGB and multispectral) through the 3D map template. During the stitching process, each RTK-GCP was fixed by identifying its position with 10 to 15 checkpoints representing GCP location on individual images (both fields and all data points). For the winter pea experiments, 5 RGB, 5 multispectral and 5 DSM mosaics were generated; while 3 RGB, 3 multispectral and 3 DSM mosaics were generated for the spring pea experiment. The white reference panel (99% reflectance in RGB-RE-NIR spectral range) imaged during each data collection was used to correct the image pixels in each band. Following this, using the “Array” command in AutoCAD (version 2018), the polygons representing each winter pea plot were digitized in a *.dxf format and further translated into *.shp. As the spring pea plots did not present a uniform grid pattern, they were directly digitized in *.shp format using Quantum GIS (QGIS, version 2.18.22). Each plot was labeled with plot ID based on experimental details.
The green-red vegetation index, normalized difference vegetation index, and normalized difference red edge index were computed using the following equations.
where
R,
G,
RE, and
NIR represents the reflectance in the red, green, red edge, and near infrared bands. The
DSM (in m above the mean sea level) was obtained from the stitched image data. To extract the
CSM, with the canopy height (in m AGL) information, the
DTM was created based on the interpolation of elevation data over bare soil points, and subtracted from the
DSM (Equation (4)).
Using data from the winter pea field plots at 1268 ADD as reference, an assessment of the quality of the RTK geo-rectification was performed by estimating the vertical position error (VPE) and the horizontal position error (HPE) [
39,
40] of the rectified and non-rectified mosaic images from the two sensors (RGB and multispectral). The
HPE was calculated using Equation (5). The VPE was estimated as the sum of the changes in elevation among adjacent points calculated with the non-rectified image (Δ
ZNR) subtracted from those calculated with the rectified image (Δ
ZR) (Equation (6)).
where
HPE and
VPE are horizontal and vertical position errors,
EE and
NE are East and North direction errors, Δ
ZNR and Δ
ZR are elevation differences from non-rectified and rectified images, and total number of samples (
n) is 4 (
Figure 2). The Δ
Z is the sum of absolute difference in the elevation between two contiguous points (Δ
Z1+Δ
Z2+Δ
Z3+Δ
Z4,
Figure 2).
From the CSM, the UAS-based CH (CHUAS), Canopy Coverage (CC) and Plot Volume (PV) were estimated. The CSM was segmented into two categories where pixels above 0.15 m AGL were classified as “canopy”, and pixels below 0.15 m AGL were classified as “non-target canopy” to eliminate weeds and other noises from the crop of interest. The 0.15 m was set as empirical threshold selected manually based on observations. The count of “canopy” pixels of a single plot was multiplied by the pixel area (e.g., 25 × 10−6 m2) to get the CC (m2). The PV (m3) was computed by multiplying the CHUAS with CC. The binary image (non-canopy and canopy) was also used as a soil mask image.
With the “Zonal Statistics” plugin in QGIS, the mean (as relative vigor) and sum (as absolute vigor) statistics of the three VIs, CH
UAS, CC, and PV were extracted and recorded in the attribute table of the plot polygons, where each plot was differentiated based on its specific ID. In order to verify the consistency of the data across time, the three VIs and the CH
UAS were plotted as a function of the ADD and compared with a reference dry matter curve [
41].
In addition to the features specified above, lodging assessment was performed in spring pea. The changes in the
CHUAS between first and second data points, and between the first and third data points were employed to calculate the lodging in spring pea. When a plot lodges, not only does the
CH decrease, but the
CC increases, due to an increase in surface area. For these reasons, both features were utilized during lodging estimation. For the lodging estimation between data points 1 and 3, the difference in absolute
CC values was multiplied with the differences between
CHUAS data (Equation (7)).
where 1 and 3 represent data collected at time points 1 and 3, 1231 ADD and 1648 ADD, respectively.
Green band (from RGB orthomosaic) frequencies were plotted for the two leaf types in the spring and winter peas. Additionally, the mean and the standard deviation of the green reflectance were also computed as indicators of greenness and its variability. This processing was carried with the multispectral mosaic collect at 1231 ADD in the spring pea plots and 1268 ADD in winter pea plots.
2.5. Satellite-Based Imagery Analysis
Using the “Georeferencer” tool in QGIS, the satellite image was rectified to the correct location. First, based on satellite archive Bing imagery (Bing aerial with layers) displayed with the “Open Layers” plugin, the original image was geo-located to its respective region with an error that would oscillate between 1–5 m. Second, the specific location of the winter pea experimental field was corrected to a sub-meter accuracy using the UAS RTK-mosaics as reference by matching the corner points of the field. In order to increase the resolution of the multispectral data from 6.0 m GSD to 1.5 m GSD, a pan-sharpening processing, based on a higher resolution panchromatic band, was performed in Erdas Imagine (version 14.1, Hexagon Geospatial) using the high pass filtering algorithm, which presented the clearest contrast between soil and vegetation pixels, compared with other methods like principal component analysis, hyperspectral color sharpening, and Brovey transform. GRVI and NDVI were computed with the satellite image following Equations (1) and (2). The mean and sum statistics were extracted from the plot polygons layer created for low altitude satellite imagery.