首页> 外文期刊>International journal of applied mechanics >PGA-SiamNet: Pyramid Feature-Based Attention-Guided Siamese Network for Remote Sensing Orthoimagery Building Change Detection
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PGA-SiamNet: Pyramid Feature-Based Attention-Guided Siamese Network for Remote Sensing Orthoimagery Building Change Detection

机译:PGA-SIAMNED:基于金字塔的特征的注意力引导暹罗网络,用于遥感正轨建筑物改变检测

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摘要

In recent years, building change detection has made remarkable progress through using deep learning. The core problems of this technique are the need for additional data (e.g., Lidar or semantic labels) and the difficulty in extracting sufficient features. In this paper, we propose an end-to-end network, called the pyramid feature-based attention-guided Siamese network (PGA-SiamNet), to solve these problems. The network is trained to capture possible changes using a convolutional neural network in a pyramid. It emphasizes the importance of correlation among the input feature pairs by introducing a global co-attention mechanism. Furthermore, we effectively improved the long-range dependencies of the features by utilizing various attention mechanisms and then aggregating the features of the low-level and co-attention level; this helps to obtain richer object information. Finally, we evaluated our method with a publicly available dataset (WHU) building dataset and a new dataset (EV-CD) building dataset. The experiments demonstrate that the proposed method is effective for building change detection and outperforms the existing state-of-the-art methods on high-resolution remote sensing orthoimages in various metrics.
机译:近年来,建设改变检测通过使用深度学习取得了显着进展。该技术的核心问题是需要额外的数据(例如LIDAR或语义标签),并且难以提取足够的特征。在本文中,我们提出了一个端到端网络,称为基于金字塔的注意力引导暹罗网络(PGA-Siamnet)来解决这些问题。培训网络以在金字塔中使用卷积神经网络捕获可能的变化。它通过引入全球共关注机制强调输入特征对之间的相关性的重要性。此外,我们通过利用各种关注机制,从而通过各种关注机制来实现这些特征的远程依赖性,然后聚集低电平和共关节水平的特征;这有助于获得更丰富的对象信息。最后,我们使用公共数据集(WHU)构建数据集和新数据集(EV-CD)构建数据集进行了评估了我们的方法。该实验表明,该方法对于建设变化检测和优于各种度量中的高分辨率遥感正轨贴图的现有最先进方法是有效的。

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