The reliability of Unmanned Aerial Vehicles (UAVs) equipped with multispectral cameras for estimating chlorophyll content, plant height, canopy area, and fruit total number of Lemons (Citrus limon)

Buyung Al Fanshuri, Cahyo Prayogo, S. Soemarno, S. Prijono, N. Arfarita
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Abstract

Monitoring  lemon production requires appropriate and efficient technology. The use of UAVs can addressed these challenges. The purpose of this study was to determine the best vegetation indices (VIs) for estimating chlorophyll content, plant height (PH), canopy area (CA), and fruit total numberas (FTN). CCM 200 was used as a tool to measure the chlorophyll content index (CCI), the number of fruits was measured by hand-counter, and other variables were recorded in meters. The UAV used was a Phantom 4 with a multispectral camera capable of capturing five different bands. The VIs was obtained via analysis of digital numbers generated by the multispectral camera. Then, the VIs was correlated with the CCI, PH, CA and FTN. VIs tested included the following: the normalized difference vegetation index (NDVI), the normalized difference vegetation index-green (NDVIg), the normalized different index (NDI), green minus red (GMR), simple ratio (SR), the Visible Atmospherically Resistant Index (VARI), normalized difference red edge (NDRE), simple ratio red-edge (SRRE), the simple ratio vegetation index (SRVI), and the Canopy Chlorophyll Content Index (CCCI). The best model for predicting CCI was obtained using the NDVIg (R2=0.8480; RMSE=6.1665 and RRMSE=0.0908). Meanwhile, SR turned out to be the best model for predicting PH (R2=0.8266; RMSE=15.6432 and RRMSE=0.0883), CA (R2=0.6886; RMSE= 0.8826 and RRMSE=0.1907), and FTN (R2=0.6850; RMSE=24.5574 and RRMSE=0.3503). The implication of these results for future activities includes establishing early monitoring and evaluation systems for lemon yield and production. This model was developed and tested in this specific location and under these environmental conditions.
配备多光谱相机的无人飞行器(UAV)估测柠檬(柑橘)叶绿素含量、株高、冠层面积和果实总数的可靠性
监测柠檬生产需要适当而高效的技术。使用无人机可以解决这些难题。本研究旨在确定估算叶绿素含量、植株高度(PH)、冠层面积(CA)和果实总数(FTN)的最佳植被指数(VIs)。使用 CCM 200 作为测量叶绿素含量指数(CCI)的工具,用手动计数器测量果实数量,其他变量以米为单位记录。使用的无人驾驶飞行器是 Phantom 4,配有能够捕捉五个不同波段的多光谱相机。VIs是通过分析多光谱相机生成的数字获得的。然后,将 VIs 与 CCI、PH、CA 和 FTN 相关联。测试的 VIs 包括:归一化差异植被指数 (NDVI)、归一化差异植被指数-绿色 (NDVIg)、归一化差异指数 (NDI)、绿减红 (GMR)、简单比率 (SR)、可见光抗大气指数 (VARI)、归一化差异红边 (NDRE)、简单比率红边 (SRRE)、简单比率植被指数 (SRVI) 和冠层叶绿素含量指数 (CCCI)。使用 NDVIg 得出了预测 CCI 的最佳模型(R2=0.8480;RMSE=6.1665;RRMSE=0.0908)。同时,SR 成为预测 PH(R2=0.8266;RMSE=15.6432,RRMSE=0.0883)、CA(R2=0.6886;RMSE=0.8826,RRMSE=0.1907)和 FTN(R2=0.6850;RMSE=24.5574,RRMSE=0.3503)的最佳模型。这些结果对未来活动的影响包括建立柠檬产量和生产的早期监测和评估系统。该模型是在这一特定地点和环境条件下开发和测试的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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