Landslide Recognition in High Resolution Remote Sensing Images Based on Semantic Segmentation

Q. Zhang, Jie Zhang, Wencheng Sun, Zhangjian Qin
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Abstract

In order to ensure the stable operation of high voltage transmission network, DeepLab V3+_SDF is proposed based on DeepLab V3+ for rapid and intelligent landslide detection from high resolution remote sensing images. Firstly, the backbone network is replaced by ResNet with squeeze-and-excitation (SE) attention mechanism to enhance the extraction of useful features. Secondly, astrous spatial pyramid pooling (ASPP) is reconstructed based on dense connection to expand the receptive field. More low-level features are then added to the decoder with feature pyramid networks plus (FPNP) to enhance detail recovery. Finally, a mixed loss function is proposed based on the pixel distribution to solve the sample imbalance problem. DeepLabV3+ _SDF is trained with self-made landslide remote sensing dataset. The experimental results show that the mean pixel accuracy(mPA) and mean intersection over union (mIoU) of DeepLab V3+_SDF on the landslide dataset reach 95.38 % and 85.27 %, which are 2.90 % and 7.76 % higher than those of DeepLabV3+. Finally, the trained DeepLab V3+_SDF is applied to Sichuan-Chongqing region in China, and the comparison results with manual interpretation show that the algorithm can be used for rapid identification of landslides in large-scale mountainous areas.
基于语义分割的高分辨率遥感图像滑坡识别
为了保证高压输电网的稳定运行,在DeepLab V3+的基础上,提出了DeepLab V3+_SDF,实现高分辨率遥感影像滑坡快速智能检测。首先,将骨干网替换为ResNet,采用SE关注机制增强有用特征的提取;其次,在密集连接的基础上重构星形空间金字塔池(astrous space pyramid pooling, ASPP),扩大接收野;然后用特征金字塔网络加(FPNP)将更多的低级特征添加到解码器中,以增强细节恢复。最后,提出了一种基于像素分布的混合损失函数来解决样本不平衡问题。DeepLabV3+ _SDF用自制的滑坡遥感数据集进行训练。实验结果表明,DeepLabV3+ _SDF在滑坡数据集上的平均像元精度(mPA)和平均交联精度(mIoU)分别达到95.38%和85.27%,分别比DeepLabV3+提高2.90%和7.76%。最后,将训练好的DeepLab V3+_SDF应用于中国川渝地区,与人工解译的对比结果表明,该算法可用于大尺度山区滑坡的快速识别。
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