UAS-Based Multi-Temporal Rice Plant Height Change Prediction

Yuanyang Lin, Jing He, Gang Liu, Biao Mou, Bing Wang, Rao Fu
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Abstract

Analyzing rice growth is essential for examining pests, illnesses, lodging, and yield. To create a Digital Surface Model (DSM ) of three important rice breeding stages, an efficient and fast (compared to manual monitoring) Unoccupied Aerial System was used to collect data. Outliers emerge in DSM as a result of the influence of environ- ment and equipment, and the outliers related to rice not only affect the extraction of rice growth changes but are also more challenging to remove. Therefore, after using ground control points uniform geodetic level for filtering, statistical outlier removal (SOR ) and quadratic surface filtering (QSF ) are used. After that, differential operations are applied to the DSM to create a differential digital surface model that can account for the change in rice plant height. Comparing the prediction accuracy before and after filtering: R2 = 0.72, RMSE = 5.13cm, nRMSE = 10.65% for the initial point cloud; after QSF, R2 = 0.89, RMSE = 2.51cm, nRMSE = 5.21%; after SOR, R2 = 0.92, RMSE = 3.32cm, nRMSE = 6.89%. The findings demonstrate that point cloud filtering, particularly SOR, can increase the accuracy of rice monitoring. The method is effective for monitoring, and after filtering, the accuracy is sufficiently increased to satisfy the needs of growth analysis. This has some potential for application and extension.
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基于uas的水稻株高变化预测
分析水稻生长对检查病虫害、倒伏和产量至关重要。为了建立水稻三个重要育种阶段的数字表面模型(DSM),使用了一种高效、快速(与人工监测相比)的无人空中系统来收集数据。由于环境和设备的影响,DSM中出现了异常值,与水稻相关的异常值不仅影响水稻生长变化的提取,而且更难去除。因此,在使用地面控制点均匀大地水准进行滤波后,采用统计离群值去除(SOR)和二次曲面滤波(QSF)。然后,对DSM进行微分运算,生成一个能够解释水稻株高变化的微分数字曲面模型。滤波前后的预测精度比较:初始点云的预测精度R2 = 0.72, RMSE = 5.13cm, nRMSE = 10.65%;QSF后,R2 = 0.89, RMSE = 2.51cm, nRMSE = 5.21%;SOR后,R2 = 0.92, RMSE = 3.32cm, nRMSE = 6.89%。研究结果表明,点云滤波,特别是SOR,可以提高水稻监测的准确性。该方法监测效果好,滤波后的精度得到了充分提高,满足了生长分析的需要。这具有一定的应用和推广潜力。
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