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    基于边缘细化的自适应注意力的遥感变化检测

    A change detection network for remote sensing based on edge refinement with adaptive attention

    • 摘要: 建筑物变化检测在城市规划和环境监测中起着至关重要的作用。基于深度学习的变化检测算法在时空关系理解、样本不平衡缓解和变化对象边界识别方面能力有限。该文提出一种耦合自适应注意力与边缘细化的变化检测网络(adaptive attention and edge refinement network, A2ERNet),旨在聚合多层上下文特征,提升建筑物变化检测性能。首先, 设计自适应注意力融合机制,该机制包含自注意力模块、交叉注意力模块与锚点原生注意力模块,帮助模型更快收敛到最优特征表示,增强变化特征的局部和全局关系; 其次,设计一种即插即用、轻量级的边缘增强细化模块,以增强建筑物边缘细节特征; 最后,建立自适应加权二元交叉熵损失函数解决样本不平衡性问题,增强网络中间层的适当监督并指导训练。在LEVIR-CD和WHU building数据集上实验和测试,A2ERNet的F1分数分别达到了0.908 7和0.915 0,明显优于对比方法。

       

      Abstract: Building change detection plays a crucial role in urban planning and environmental monitoring. However, deep learning-based change detection algorithms exhibit limited capabilities in understanding spatiotemporal relationships, alleviating sample imbalance, and identifying the boundaries of changing objects. Given this, this study proposed a change detection network that coupled adaptive attention and edge refinement (A2ERNet), aiming at aggregating multi-layer contextual features to enhance the performance of building change detection. First, this study designed an adaptive attention fusion mechanism that includes self-attention, cross-attention, and anchor-primary attention modules. This mechanism facilitates faster model convergence to optimal feature representations and enhances both local and global relationships of change features. Subsequently, it introduced a plug-and-play, lightweight edge enhancement and refinement module to improve building edge details. Finally, it established an adaptively weighted binary cross-entropy loss function to address sample imbalance issues, ensuring appropriate supervision for the network's intermediate layers and guiding the training process. Through experiments and tests conducted on the LEVIR-CD and WHU building datasets, the A2ERNet achieved F1-scores of 0.908 7 and 0.915 0, respectively, demonstrating significant superiority over comparative methods.

       

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