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SFEARNet: A Network Combining Semantic Flow and Edge-Aware Refinement for Highly Efficient Remote Sensing Image Change Detection | IEEE Journals & Magazine | IEEE Xplore

SFEARNet: A Network Combining Semantic Flow and Edge-Aware Refinement for Highly Efficient Remote Sensing Image Change Detection


Abstract:

In change detection, the pseudo-variations in the visual features of remote sensing images are attributed to imaging conditions, lighting, seasonal changes, atmospheric i...Show More

Abstract:

In change detection, the pseudo-variations in the visual features of remote sensing images are attributed to imaging conditions, lighting, seasonal changes, atmospheric interference, and other factors. These pseudo-variations yield a great challenge to change detection. The traditional change detection network usually suffers from up-sampling information loss and blurred edges. Aiming at resolving the above problems, a network combining semantic flow and edge-aware refinement (SFEARNet) for highly efficient remote sensing image change detection has been proposed. The Pyramid Feature Enhancement Module (PFEM) has been designed for the enhancement of differential information. The introduction of the Semantic Flow Information Transmission Module (SFITM) enables the effective transmission and retaining of key information through semantic flow. An Edge-aware Refinement Module (EARM) has been developed, designed to extract change edge and enhance the refinement effect of the edge. The experiments have been conducted on the LEVIR-CD, WHU-CD, GZ-CD, and CLCD datasets. In comparison with the existing methodologies, the experimental results demonstrate that SFEARNet attains the highest change detection accuracy and the smallest flops while maintaining a similar number of parameters. This enables more efficient change detection. In particular, the proposed method can effectively refine the edges of the change region, reduce the loss of up-sampling information, and enhance differential feature extraction. This brings a new solution to the field of remote sensing image change detection. The code is available at https://github.com/miao-0417/SFEARNet.
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Date of Publication: 26 February 2025

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