基于多尺度密集特征融合的黄土滑坡识别

Kaiyue Sun, Qiaoming Li, Wenlong Wang, P. Zhang, Zhantu Li, Xingnan Zhao, Zeqi Li
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引用次数: 0

摘要

黄土滑坡地质灾害在西北地区分布广泛,但相关的关注和研究却很少。滑坡识别可以为滑坡灾害管理和风险管理提供信息帮助。以往基于深度学习的滑坡遥感图像识别工作,由于缺乏高分辨率多源数据集,滑坡识别边界缺失且不明显,识别精度不理想。本文提出了一种多尺度密集特征融合的黄土滑坡识别网络(MDFF),并基于GF-2图像和DEM构建了具有光谱和地形信息的黄土滑坡样本开放数据集(MSLLD)。MDFF网络通过密集连接机制保留不同层次的特征,弥补细节特征的缺失,在网络中引入密集连接的扩展卷积层,捕捉滑坡图像的不同尺度特征,扩大接收野,避免卷积退化。在MSLLD上对不同网络进行测试时,所提网络的性能最先进,mIoU和f1得分分别为82.31%和84.59%,表明所提网络能够有效识别滑坡,对黄土滑坡灾害的调查分析具有重要价值。
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Multi-Scale Dense Feature Fusion Based Loess Landslide Recognition
Loess landslide geological disasters are widely distributed in Northwest China, but there are few relevant attention and researches. Landslide recognition can provide information help for landslide disaster management and risk management. Previous works of landslide recognition of remote sensing images based on deep learning, due to the lack of high resolution multi-source datasets, the boundary of landslide recognition is missing and not obvious and the identification accuracy is not ideal. In this work, a multi-scale dense feature fusion loess landslide recognition network (MDFF) was proposed and an open dataset of loess landslide samples (MSLLD) based on GF-2 images and DEM was constructed, which has spectral and topographic information. The MDFF network retains different levels of features by means of dense connection mechanism to make up for the loss of detailed features, the dense connected dilated convolution layer is introduced into the network to capture the different scale features of landslide images, expand the receptive field and avoid convolution degradation. When testing different networks on MSLLD, the proposed network achieves the most advanced performance, mIoU and F1-score were 82.31 % and 84.59% respectively, indicating that the proposed network can effectively recognize landslides, which is of great value for the investigation and analysis of loess landslide disasters.
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