A disparity‐aware Siamese network for building change detection in bi‐temporal remote sensing images

Yansheng Li, Xinwei Li, Wei Chen, Yongjun Zhang
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Abstract

Building change detection has various applications, such as urban management and disaster assessment. Along with the exponential growth of remote sensing data and computing power, an increasing number of deep‐learning‐based remote sensing building change detection methods have been proposed in recent years. Objectively, the overwhelming majority of existing methods can perfectly deal with the change detection of low‐rise buildings. By contrast, high‐rise buildings often present a large disparity in multitemporal high‐resolution remote sensing images, which degrades the performance of existing methods dramatically. To alleviate this problem, we propose a disparity‐aware Siamese network for detecting building changes in bi‐temporal high‐resolution remote sensing images. The proposed network utilises a cycle‐alignment module to address the disparity problem at both the image and feature levels. A multi‐task learning framework with joint semantic segmentation and change detection loss is used to train the entire deep network, including the cycle‐alignment module in an end‐to‐end manner. Extensive experiments on three publicly open building change detection datasets demonstrate that our method achieves significant improvements on datasets with severe building disparity and state‐of‐the‐art performance on datasets with minimal building disparity simultaneously.
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用于双时相遥感图像中建筑物变化检测的差异感知连体网络
建筑物变化检测有多种应用,如城市管理和灾害评估。随着遥感数据和计算能力的指数级增长,近年来提出了越来越多基于深度学习的遥感建筑物变化检测方法。客观地说,绝大多数现有方法都能完美地处理低层建筑的变化检测。相比之下,高层建筑往往在多时高分辨率遥感图像中呈现出较大的差异,这就大大降低了现有方法的性能。为了缓解这一问题,我们提出了一种差异感知连体网络,用于检测双时相高分辨率遥感图像中建筑物的变化。该网络利用循环对齐模块来解决图像和特征层面的差异问题。多任务学习框架与语义分割和变化检测损失相结合,用于训练整个深度网络,包括以端到端的方式训练循环对齐模块。在三个公开开放的建筑物变化检测数据集上进行的广泛实验表明,我们的方法在建筑物差异严重的数据集上取得了显著的改进,同时在建筑物差异极小的数据集上取得了最先进的性能。
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