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Winter Wheat Yield Estimation from Multitemporal Remote Sensing Images based on Convolutional Neural Networks

机译:基于卷积神经网络的多时相遥感影像冬小麦产量估算

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The development of deep learning and big data technology has introduced information and intelligent techniques to agricultural remote sensing estimation. The deep learning methods represented by Convolutional Neural Network (CNN) have abilities to extract the depth-dependent features of crop growth. In the field of crop yield estimation, the core challenge is to utilize CNN to extract the related information from remote sensing image. In this paper, we apply histogram dimensionality reduction and time series fusion to generate the input layer of CNN. In view of the data characteristics, the CNN network structure was designed to extract the features of winter wheat growth from multitemporal MODIS images for yield estimation in North China. The results showed that the estimated yield of winter wheat based on time-series remote sensing images is highly correlated with statistical data, with Pearson's r of 0.82, RMSE of 724.72 kg.hm-2. In the case of sufficient statistical data, the provincial model performs better. CNN is able to mine more relevant information and has higher robustness. It also provides a technical reference for estimating large-scale crop yield.
机译:深度学习和大数据技术的发展已经将信息和智能技术引入了农业遥感估计中。卷积神经网络(CNN)代表的深度学习方法具有提取作物生长的深度相关特征的能力。在作物产量估算领域,核心挑战是利用CNN从遥感图像中提取相关信息。在本文中,我们应用直方图降维和时间序列融合来生成CNN的输入层。鉴于数据特征,设计了CNN网络结构,以从多时相MODIS图像中提取冬小麦生长特征,以估算华北地区的单产。结果表明,基于时间序列遥感影像估算的冬小麦单产与统计数据高度相关,皮尔森系数r为0.82,均方根误差为724.72kg.hm。 -2 。在统计数据充足的情况下,省级模型的效果更好。 CNN能够挖掘更多相关信息,并且具有更高的鲁棒性。它还为估算大规模作物产量提供了技术参考。

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