研究目的
To explore how imaging angle impacts plant phenotyping quality by designing a swing hyperspectral imaging system and determining optimized imaging angle(s) for distinguishing different nitrogen and water treatments in corn plants.
研究成果
The swing hyperspectral imaging system effectively captured plant images at various angles, revealing that imaging angle significantly impacts phenotyping quality. Optimal angles were identified: 75° for distinguishing water treatments and 15° for nitrogen treatments based on pixel-level NDVI distributions, with higher angles better for RWC distribution differences. This allows tailored imaging angle selection for specific phenotyping needs.
研究不足
The study focused on corn plants and specific treatments; results may not generalize to other species or conditions. The imaging system required manual adjustments and was used in a controlled environment, limiting scalability. Only 7 angles were tested due to time constraints, potentially missing optimal angles. Pixel-level RWC predictions had outliers and may not be highly accurate for all plant parts.
1:Experimental Design and Method Selection:
A swing hyperspectral imaging system was designed to capture images at angles from 0° (side view) to 90° (top view). Hyperspectral images were processed using Matlab algorithms to compute NDVI and RWC indices, with statistical analysis to determine optimal angles.
2:Sample Selection and Data Sources:
36 corn plants (genotype Hybrid B73 × Mo17) were grown in a greenhouse under controlled conditions and allocated into three treatments: high N well-watered (control), high N drought-stressed, and low N well-watered. Plants were imaged at 7 angles (0°, 15°, 30°, 45°, 60°, 75°, 90°). Ground truth measurements included SPAD values and RWC.
3:List of Experimental Equipment and Materials:
Hyperspectral camera (MSV-500, Middleton Spectral Vision Co.), lighting source with halogen bulbs (MR16 GU10 Brushed Nickel, Lithonia Lighting Inc.), computer (Dell Precision System 5810), angle sensor (MTi-300-AHRS, Xsens Technologies B.V.), SPAD meter (SPAD-502Plus, Konica Minolta Sensing Americas, Inc.), and various materials like aluminum extusions, black felt fabric, and soil (Fafard 52 mix).
4:Experimental Procedures and Operational Workflow:
Plants were imaged sequentially at each angle, with white reference calibration using a PVC panel. Images were segmented using a Matlab algorithm based on red-edge region. Data analysis involved computing NDVI, predicting RWC with PLSR models, and using Bhattacharyya distance for distribution comparisons.
5:Data Analysis Methods:
Statistical analysis included paired t-tests for plant-level NDVI, kernel density estimates for pixel-level distributions, and partial least square regression for RWC prediction. Software used: Matlab R2016a, SAS, TIBCO Spotfire.
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