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A Novel Global-Aware Deep Network for Road Detection of Very High Resolution Remote Sensing Imagery

机译:一种新的全球知识深度网络,用于非常高分辨率遥感图像的道路检测

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Road detection from very high-resolution (VHR) remote sensing imagery has great importance in a broad array of applications. However, the most advanced deep learning-based methods often produce fragmented road segments, due to the complex backgrounds of images, such as the occlusions and shadows caused by the trees and buildings, or the surrounding objects with similar textures. In this paper, the characteristics of existing models were analyzed and an effective road recognition method was explored, we found that capturing long-range dependencies helps improve road recognition. Therefore, a novel global-aware deep network (GAN) for road detection is proposed, in which the spatial-aware module (SAM) was applied to capture spatial context dependencies and the channel-aware module (CAM) was applied to capture the interchannel dependencies. Through establishing the relationships between spatial contexts and between channels, the GAN could effectively alleviate the road recognition problems, and the advantages of the proposed approach were validated on the public DeepGlobe road dataset. The experimental result demonstrates the superiority of our method.
机译:来自非常高分辨率(VHR)遥感图像的道路检测在广泛的应用中非常重视。然而,由于图像的复杂背景,例如由树木和建筑物引起的遮挡和阴影,或具有相似纹理的遮挡物和阴影,最先进的基于深度学习的方法通常会产生分散的道路段。在本文中,分析了现有模型的特点,探讨了有效的道路识别方法,我们发现捕获远程依赖性有助于提高道路识别。因此,提出了一种用于道路检测的新型全球知识的深网络(GAN),其中应用了空间感知模块(SAM)来捕获空间上下文依赖性,并且应用通道感知模块(CAM)捕获InterChannel依赖关系。通过建立空间环境与渠道之间的关系,GAN可以有效缓解道路识别问题,并且在公共DeepGlobe Road数据集上验证了所提出的方法的优势。实验结果表明了我们方法的优越性。

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