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基于多尺度交叉注意力的语义感知遥感变化检测

Semantic-Aware Remote Sensing Change Detection with Multi-Scale Cross-Attention.

作者信息

Zheng Xingjian, Lin Xin, Qing Linbo, Ou Xianfeng

机构信息

College of Design and Engineering, National University of Singapore, Singapore 119077, Singapore.

School of Information Science and Engineering, Hunan Institute of Science and Technology, Yueyang 414000, China.

出版信息

Sensors (Basel). 2025 Apr 29;25(9):2813. doi: 10.3390/s25092813.

Abstract

Remote sensing image change detection plays a vital role in diverse real-world applications such as urban development monitoring, disaster assessment, and land use analysis. As deep learning strives, Convolutional Neural Networks (CNNs) have shown their effects in image processing applications. There are two problems in old-school change detection techniques: First, the techniques do not fully use the effective information of the global and local features, which causes their semantic comprehension to be less accurate. Second, old-school methods usually simply rely on differences and computation at the pixel level without giving enough attention to the information at the semantic level. To address these problems, we propose a multi-scale cross-attention network (MSCANet) based on a CNN in this paper. First, a multi-scale feature extraction strategy is employed to capture and fuse image information across different spatial resolutions. Second, a cross-attention module is introduced to enhance the model's ability to comprehend semantic-level changes between bitemporal images. Compared to the existing methods, our approach better integrates spatial and semantic features across scales, leading to more accurate and coherent change detection. Experiments on three public datasets (LEVIR-CD, CDD, and SYSU-CD) demonstrate competitive performance. For example, the model achieves an F1-score of 96.19% and an IoU of 92.67% on the CDD dataset. Additionally, robustness tests with Gaussian noise show that the model maintains high accuracy under input degradation, highlighting its potential for real-world applications. These findings suggest that our MSCANet effectively improves semantic awareness and robustness, offering a promising solution for change detection in complex and noisy remote sensing environments.

摘要

遥感影像变化检测在城市发展监测、灾害评估和土地利用分析等各种实际应用中发挥着至关重要的作用。随着深度学习的发展,卷积神经网络(CNN)在图像处理应用中已展现出其效果。传统的变化检测技术存在两个问题:其一,这些技术没有充分利用全局和局部特征的有效信息,导致其语义理解不够准确。其二,传统方法通常仅仅依赖像素级别的差异和计算,而没有足够重视语义级别的信息。为了解决这些问题,我们在本文中提出了一种基于CNN的多尺度交叉注意力网络(MSCANet)。首先,采用多尺度特征提取策略来捕获和融合不同空间分辨率下的图像信息。其次,引入交叉注意力模块以增强模型理解双时相图像之间语义级变化的能力。与现有方法相比,我们的方法能更好地跨尺度整合空间和语义特征,从而实现更准确、连贯的变化检测。在三个公共数据集(LEVIR-CD、CDD和SYSU-CD)上的实验证明了其具有竞争力的性能。例如,该模型在CDD数据集上实现了96.19%的F1分数和92.67%的交并比。此外,高斯噪声鲁棒性测试表明,该模型在输入退化情况下仍能保持高精度,突出了其在实际应用中的潜力。这些发现表明,我们的MSCANet有效地提高了语义感知和鲁棒性,为复杂且有噪声的遥感环境中的变化检测提供了一个有前景的解决方案。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a942/12074100/3fc8cfc9725f/sensors-25-02813-g003.jpg

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