Affiliation:
1. School of Surveying and Land Information Engineering, Henan Polytechnic University, Jiaozuo 454003, China
2. MNR Key Laboratory of Mine Spatio-Temporal Information and Ecological Restoration, Henan Polytechnic University, Jiaozuo 454003, China
Abstract
The study of high-precision building change detection is essential for the sustainable development of land resources. However, remote sensing imaging illumination variation and alignment errors have a large impact on the accuracy of building change detection. A novel lightweight Siamese neural network building change detection model is proposed for the error detection problem caused by non-real changes in high-resolution remote sensing images. The lightweight feature extraction module in the model acquires local contextual information at different scales, allowing it to fully learn local and global features. The hybrid attention module consisting of the channel and spatial attention can make full use of the rich spatiotemporal semantic information around the building to achieve accurate extraction of changing buildings. For the problems of large span of changing building scales, which easily lead to rough extraction of building edge details and missed detection of small-scale buildings, the multi-scale concept is introduced to divide the extracted feature maps into multiple sub-regions and introduce the hybrid attention module separately, and finally, the output features of different scales are weighted and fused to enhance the edge detail extraction capability. The model was experimented on the WHU-CD and LEVIR-CD public data sets and achieved F1 scores of 87.8% and 88.1%, respectively, which have higher change detection accuracy than the six comparison models, and only cost 9.15 G MACs and 3.20 M parameters. The results show that our model can achieve higher accuracy while significantly reducing the number of model parameters.
Funder
National Natural Science Fundation of China
Subject
Management, Monitoring, Policy and Law,Renewable Energy, Sustainability and the Environment,Geography, Planning and Development,Building and Construction
Reference46 articles.
1. Review article digital change detection techniques using remotely-sensed data;Singh;Int. J. Remote Sens.,1989
2. Local descriptor learning for change detection in synthetic aperture radar images via convolutional neural networks;Dong;IEEE Access,2018
3. Zhang, J., Pan, B., Zhang, Y., Liu, Z., and Zheng, X. (2022). Building Change Detection in Remote Sensing Images Based on Dual Multi-Scale Attention. Remote Sens., 14.
4. Deep depthwise separable convolutional network for change detection in optical aerial images;Liu;IEEE J. Sel. Top. Appl. Earth Obs. Remote Sens.,2020
5. EffCDNet: Transfer learning with deep attention network for change detection in high spatial resolution satellite images;Patil;Digit. Signal Process.,2021
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