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Unmanned Aerial System Based Tomato Yield Estimation Using Machine Learning

机译:基于无人航空系统的机器学习番茄产量估计

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Recent years have witnessed enormous growth in Unmanned Aircraft System (UAS) and sensor technology which madeit possible to collect high spatial and temporal resolutions data over the crops throughout the growing season. Theobjective of this research is to develop a novel machine learning framework for marketable tomato yield estimation usingmulti-source and spatio-temporal remote sensing data collected from UAS. The proposed machine learning model isbased on Artificial Neural Network (ANN) and it takes UAS based multi-temporal features such as canopy cover,canopy height, canopy volume, Excessive Greenness Index along with weather information such as humidity,precipitation, temperature, solar radiations and crop evapotranspiration (ETc) as input and predicts the correspondingmarketable yield. The predicted yield is validated using the actual harvested yield. Breeders may be able to use thepredicted yield as a parameter for genotype selection so that they can not only increase their experiment size for fastergenotype selection but also to make efficient and informed decision on best performing genotypes. Moreover, yieldprediction maps can be used to develop within-field management zones to optimize field management practices.
机译:近年来,无人机系统(UAS)和传感器技术取得了巨大的发展, 在整个生长季节中,可以收集整个作物的高时空分辨率数据。这 这项研究的目的是开发一种新颖的机器学习框架,用于使用 从UAS收集的多源和时空遥感数据。拟议的机器学习模型是 基于人工神经网络(ANN),并采用基于UAS的多时相特征,例如树冠遮盖, 冠层高度,冠层体积,过度绿色指数以及天气信息(例如湿度, 降水,温度,太阳辐射和农作物蒸散量(ETc)作为输入并预测相应的 适销对路的收益。使用实际收获的产量来验证预测的产量。育种者可以使用 预测的产量作为基因型选择的参数,这样他们不仅可以增加实验规模,而且速度更快 选择基因型,还可以对表现最佳的基因型做出有效而明智的决定。而且产量 预测图可用于开发野外管理区域,以优化野外管理实践。

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