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Siamese Transformer-Based Building Change Detection in Remote Sensing Images

Jiawei Xiong, Feng Liu, Xingyuan Wang, Chaozhong Yang

2024Sensors11 citationsDOIOpen Access PDF

Abstract

To address the challenges of handling imprecise building boundary information and reducing false-positive outcomes during the process of detecting building changes in remote sensing images, this paper proposes a Siamese transformer architecture based on a difference module. This method introduces a layered transformer to provide global context modeling capability and multiscale features to better process building boundary information, and a difference module is used to better obtain the difference features of a building before and after a change. The difference features before and after the change are then fused, and the fused difference features are used to generate a change map, which reduces the false-positive problem to a certain extent. Experiments were conducted on two publicly available building change detection datasets, LEVIR-CD and WHU-CD. The F1 scores for LEVIR-CD and WHU-CD reached 89.58% and 84.51%, respectively. The experimental results demonstrate that when utilized for building change detection in remote sensing images, the proposed method exhibits improved robustness and detection performance. Additionally, this method serves as a valuable technical reference for the identification of building damage in remote sensing images.

Topics & Concepts

Change detectionRobustness (evolution)Remote sensingComputer scienceTransformerArchitectureData miningArtificial intelligenceComputer visionEngineeringGeologyGeographyBiochemistryChemistryArchaeologyVoltageGeneElectrical engineeringRemote-Sensing Image ClassificationRemote Sensing and Land UseRemote Sensing in Agriculture
Siamese Transformer-Based Building Change Detection in Remote Sensing Images | Litcius