Deep learning technology such as convolutional neural networks (CNN) can extract the distinguishable and representative features of different land cover from remote sensing images in a hierarchical way to classify. However, in the field of agriculture, there are few application of crops classification from multi-spectral remote sensing images based on deep learning. In this context, we compared the classification methods of CNN and support vector machines (SVM) in extracting the spatial distribution of crops planting area from Sentineal-2A multi-spectral remote sensing images in Yuanyang county, China. For the region of study, both methods obtained reasonable spatial distribution of different crops, the verification results show that the overall accuracy of CNN is 95.6% which is superior to SVM.
Yufeng LiCheng‐Cheng LiuWei ZhaoYufeng Huang
Zhuang ZhouShengyang LiYuyang Shao
Michalis GiannopoulosGrigorios TsagkatakisPanagiotis Tsakalides
Shunping JiChi ZhangAnjian XuYun ShiYulin Duan
张晓男 Zhang XiaonanXing Zhong朱瑞飞 Zhu Ruifei高放 Gao Fang张作省 Zhang Zuoxing鲍松泽 Bao Songze李竺强 Li Zhuqiang