Geo-parcel based Crops Classification with Sentinel-1 Time Series Data via Recurrent Reural Network

Yingwei Sun, Jiancheng Luo, Tianjun Wu, Yingpin Yang, Hao Liu, Wen Dong, Lijing Gao, Xiaodong Hu
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引用次数: 2

Abstract

The classification of crops based on remote sensing technology is a necessary measure for large-scale agricultural monitoring. In the regions with good light conditions, optical satellite data can be used for crop classification with a satisfied result. However, there are also large regions of cloudy and rainy regions on the surface of the earth. In these regions, optical images can only obtained fragmented data through the cloud gap or even impossible to get, which cannot meet the requirements of rapid and accurate agricultural monitoring. Synthetic aperture radar (SAR) data can be rarely affected by atmospheric disturbances and sensitive to surface structure characteristics, so the SAR data has good application potential in agriculture. Especially in cloudy and rainy regions, its application for crop classification has more realistic significance. In this study, we classify crops based on Sentinel-1 multi-temporal data in Xifeng County at the geo-parcel scale with a recurrent neural network, the overall accuracy could up to 69 percent. This method can solve the problem of continuous optical data loss in crop classification in cloudy and rainy regions.
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基于循环神经网络的Sentinel-1时间序列作物分类
基于遥感技术的作物分类是实现大规模农业监测的必要措施。在光照条件较好的地区,利用卫星光学数据进行作物分类,可以取得满意的结果。然而,地球表面也有大片的多云和多雨地区。在这些地区,光学图像只能通过云隙获得碎片化的数据,甚至无法获得,无法满足快速、准确的农业监测要求。合成孔径雷达(SAR)数据受大气扰动影响小,对地表结构特征敏感,在农业领域具有良好的应用潜力。特别是在多云多雨地区,将其应用于作物分类更具有现实意义。在本研究中,我们基于西丰县Sentinel-1多时相数据,在地包尺度上采用递归神经网络对作物进行分类,总体精度可达69%。该方法可以解决多云多雨地区作物分类中连续光学数据丢失的问题。
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