Remote sensing landslide recognition method based on LinkNet and attention mechanism

Jing Yang, Yaohua Luo, Xuben Wang, Haoyu Tang, S. Rao
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Abstract

Rapid detection and identification of landslide areas are very important for disaster prevention and mitigation. Aiming at the problems of time-consuming and labor-intensive traditional landslide information extraction methods and low recognition efficiency, a remote sensing landslide recognition method based on LinkNet, and convolution attention module was proposed. The model adopts the coding-decoding structure to improve the operation efficiency. The Convolutional Block Attention Module (CBAM) is applied to optimize the weight allocation from both channel and spatial dimensions to highlight the landslide feature information. And compared with the traditional U-Net and LinkNet models. The results show that the CBAM-LinkNet model has excellent performance in remote sensing landslide identification, which provides the possibility for rapid and accurate landslide identification.
基于LinkNet和注意机制的滑坡遥感识别方法
滑坡区域的快速检测和识别对于防灾减灾具有重要意义。针对传统滑坡信息提取方法耗时费力、识别效率低等问题,提出了一种基于LinkNet和卷积关注模块的滑坡遥感识别方法。该模型采用编译码结构,提高了运算效率。采用卷积块关注模块(CBAM)从通道和空间两个维度优化权重分配,突出滑坡特征信息。并与传统的U-Net和LinkNet模型进行了比较。结果表明,CBAM-LinkNet模型在滑坡遥感识别中具有优异的性能,为快速准确的滑坡识别提供了可能。
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