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CS-CapsFPN: A Context-Augmentation and Self-Attention Capsule Feature Pyramid Network for Road Network Extraction from Remote Sensing Imagery

机译:CS-CAPSFPN:一个上下文和自我关注胶囊特征来自遥感图像的道路网络提取金字塔网络

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摘要

The information-accurate road network database is greatly significant and provides essential input to many transportation-related activities. Recently, remote sensing images have been an important data source for assisting rapid road network updating tasks. However, due to the diverse challenging scenarios of roads in remote sensing images, such as occlusions, shadows, material diversities, and topology variations, it is still difficult to realize highly accurate extraction of roads. This paper proposes a novel context-augmentation and self-attention capsule feature pyramid network (CS-CapsFPN) to extract roads from remote sensing images. By designing a capsule feature pyramid network architecture, the proposed CS-CapsFPN can extract and fuze different-level and different-scale high-order capsule features to provide a high-resolution and semantically strong feature representation for predicting the road region maps. By integrating the context-augmentation and self-attention modules, the proposed CS-CapsFPN can exploit multi-scale contextual properties at a highresolution perspective and emphasize channel-wise informative features to further enhance the feature representation robustness. Quantitative evaluations on two test datasets show that the proposed CS-CapsFPN achieves a competitive performance with a precision, recall, intersection-over-union, and F_(score) of 0.9470, 0.9407, 0.8957, and 0.9438, respectively. Comparative studies also confirm the feasibility and superiority of the proposed CS-CapsFPN in road extraction tasks.
机译:信息准确的道路网络数据库非常重要,并为许多与运输有关的活动提供必要的输入。最近,遥感图像是帮助Rapid Road网络更新任务的重要数据源。然而,由于遥感图像中的道路各种具有挑战性的道路,如遮挡,阴影,材料多样性和拓扑变化,仍然难以实现高度准确的道路提取。本文提出了一种新颖的上下文增强和自我关注胶囊特征金字塔网络(CS-CAPSFPN),以从遥感图像中提取道路。通过设计胶囊特征金字塔网络架构,所提出的CS-Capsfpn可以提取和引发不同级别和不同规模的高阶胶囊功能,以提供高分辨率和语义强大的特征表示,用于预测路径地图。通过集成上下文增强和自我关注模块,所提出的CS-CAPSFPN可以以高尺度的透视分配来利用多尺度上下文属性,并强调通道明智的信息特征,以进一步增强特征表示鲁棒性。两个测试数据集的定量评估表明,所提出的CS-CAPSFPN分别实现了竞争性能,分别具有0.9470,0.9407,0.8957和0.9438的精度,召回,交通突出,F_(得分)和0.9438。比较研究还证实了建议的CS-Capsfpn在道路提取任务中的可行性和优越性。

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  • 来源
    《Canadian Journal of Remote Sensing》 |2021年第3期|499-517|共19页
  • 作者单位

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    School of Remote Sensing and Geomatics Engineering Nanjing University of Information Science and Technology Nanjing China;

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    Faculty of Computer and Software Engineering Huaiyin Institute of Technology Huaian China;

    Department of Geography and Environmental Management University of Waterloo Waterloo Canada;

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