Litcius/Paper detail

L-Unet: A Landslide Extraction Model Using Multi-Scale Feature Fusion and Attention Mechanism

Zhangyu Dong, Sen An, Jin Zhang, Jinqiu Yu, Jinhui Li, Daoli Xu

2022Remote Sensing54 citationsDOIOpen Access PDF

Abstract

At present, it is challenging to extract landslides from high-resolution remote-sensing images using deep learning. Because landslides are very complex, the accuracy of traditional extraction methods is low. To improve the efficiency and accuracy of landslide extraction, a new model is proposed based on the U-Net model to automatically extract landslides from remote-sensing images: L-Unet. The main innovations are as follows: (1) A multi-scale feature-fusion (MFF) module is added at the end of the U-Net encoding network to improve the model’s ability to extract multi-scale landslide information. (2) A residual attention network is added to the U-Net model to deepen the network and improve the model’s ability to represent landslide features. (3) The bilinear interpolation algorithm in the decoding network of the U-Net model is replaced by data-dependent upsampling (DUpsampling) to improve the quality of the feature maps. Experimental results showed that the precision, recall, MIoU and F1 values of the L-Unet model are 4.15%, 2.65%, 4.82% and 3.37% higher than that of the baseline U-Net model, respectively. It was proven that the new model can extract landslides accurately and effectively.

Topics & Concepts

LandslideComputer scienceUpsamplingBilinear interpolationArtificial intelligenceRemote sensingScale (ratio)Feature (linguistics)Pattern recognition (psychology)Data miningComputer visionGeologyImage (mathematics)CartographyGeotechnical engineeringGeographyPhilosophyLinguisticsLandslides and related hazardsAnomaly Detection Techniques and ApplicationsRemote-Sensing Image Classification