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Crop Classification based on Deep Learning in Northeast China using SAR and Optical Imagery

机译:基于SAR和光学图像的东北地区深度学习的作物分类

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Crop classification is a significant requirement to estimate crop area, structure, and spatial distribution, as well as provide important input parameters for crop yield models. Compared with optical remote sensing, Synthetic Aperture Radar (SAR) can be applied in all-time and all-weather condition without clouds interference. This study aims to develop a deep learning based crop classification for multi-source and multi-temporal remote sensing imageries, including C-band GF-3, Sentinel-1 and Sentinel-2 data. The experiment was carried out in Northeast of China. Convolutional neural network (CNN) and visual geometry group (VGG) were used for classify crops based on the different numbers of input bands composed by optical and SAR data. The overall accuracy of crop classification reached 91.6% , and the kappa coefficient was 0.88. The classification results proved that combination of multi-source and multi-temporal remote sensing imagery can effectively improve the classification accuracy of crops.
机译:作物分类是估计作物区域,结构和空间分布的重要要求,以及为作物产量模型提供重要的输入参数。与光学遥感相比,合成孔径雷达(SAR)可以在没有云干扰的情况下应用于所有时间和全天候条件。本研究的目的是开发用于多源和多颞遥感图像,包括C波段GF-3,哨兵-1和Sentinel-2的数据的深基础的学习作物分类。实验是在中国东北进行的。卷积神经网络(CNN)和视觉几何组(VGG)用于基于光学和SAR数据组成的不同数量的输入频段对作物进行分类。作物分类的总体准确性达到91.6%,喀布巴系数为0.88。分类结果证明,多源和多时间遥感图像的组合可以有效地提高作物的分类准确性。

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