研究目的
To evaluate the performance of line-scan, ground based hyperspectral imaging (HSI) for the task of mango yield estimation, as this technology has not yet been used for this task, and to compare it with state-of-the-art RGB techniques.
研究成果
The pipeline for mango yield estimation using ground-based hyperspectral imaging achieved determination coefficients up to 0.75 against field counts and 0.83 against RGB counts, demonstrating its viability for precision agriculture. HSI can be a feasible alternative to RGB cameras, especially when already deployed for other traits like disease detection. The method is robust and repeatable, with consistent results across different dates and large orchard scales.
研究不足
The study is limited to mango orchards and may not generalize to other fruit types. Hyperspectral imaging has lower spatial resolution compared to RGB cameras, which could affect accuracy in highly occluded environments. The optimization process requires manual ground truth data, which is labor-intensive. Environmental factors like changing illumination could impact data quality.
1:Experimental Design and Method Selection:
The study used a pipeline involving data acquisition from an unmanned ground vehicle (UGV) equipped with a hyperspectral camera, LIDAR, and GPS. Spectral pre-processing was applied for illumination compensation. Tree delimitation was done using LIDAR segmentation, mango pixels were identified using a convolutional neural network (CNN), and fruit counting was optimized using genetic algorithms.
2:Sample Selection and Data Sources:
Data were collected from a commercial mango orchard with 494 trees in Bundaberg, Australia, in December
3:Subsets were created for training, validation, and testing, using manual field counts and RGB-based counts as ground truth. List of Experimental Equipment and Materials:
20 UGV (Shrimp), hyperspectral camera (Resonon Pika II Vis-NIR), LIDAR (Velodyne HDL64E), GPS (Novatel SPAN-CPT), illumination reference panels (QPcard 102), RGB camera (Prosilica GT3300C), strobe lights (Excelitas MVS-5000).
4:0). Experimental Procedures and Operational Workflow:
4. Experimental Procedures and Operational Workflow: The UGV traversed tree rows at 5 km/h, acquiring hyperspectral and LIDAR data. Images were pre-processed, trees were delimited, mango pixels were classified, and fruit were counted using morphological operations. Parameters were optimized using genetic algorithms.
5:Data Analysis Methods:
Performance was evaluated using determination coefficients (R2) and root-mean-square error (RMSE) against ground truth counts. Mapping was done to visualize yield distribution.
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