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首页> 外文期刊>Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of >Automatic Road Extraction from High-Resolution Remote Sensing Images Using a Method Based on Densely Connected Spatial Feature-Enhanced Pyramid
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Automatic Road Extraction from High-Resolution Remote Sensing Images Using a Method Based on Densely Connected Spatial Feature-Enhanced Pyramid

机译:使用基于密集连接的空间特征增强金字塔的方法,从高分辨率遥感图像自动道路提取

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摘要

Road extraction is an important task in remote sensing image information extraction. Recently, deep learning semantic segmentation has become an important method of road extraction. Due to the impact of the loss of multiscale spatial features, the results of road extraction still contain incomplete or fractured results. In this article, we proposed a deep learning model, which is called the dense-global-residual network that reduces the loss of spatial information and enhances context awareness. In the dense-global-residual network, the residual network is used to extract the features at different levels. To obtain more abundant multiscale features, a dense and global spatial pyramid pooling module based on Atrous Spatial Pyramid Pooling is built to perceive and aggregate the contextual information. The proposed method obtains better results on the GF-2 road dataset and public Massachusetts road dataset of aerial imagery. In order to prove the effectiveness of our method, we compared with four methods, such as DeepLabV3+, U-net, D-LinkNet, and coord-dense-global model, and found that the accuracy of our method is considerably better. Moreover, the dense-global-residual network can also effectively extract roads, especially trees and building shadows that occlude the road. In addition, our method can successfully extract roads in regions of different development levels in universality experiments. This indicates that the proposed method can effectively maintain the completeness and continuity of roads and improve the accuracy of road segmentation from high-resolution remote sensing images.
机译:道路提取是遥感图像信息提取中的重要任务。最近,深度学习语义分割已成为道路提取的重要方法。由于多尺度空间特征的影响,道路提取的结果仍然含有不完整或裂缝的结果。在本文中,我们提出了一个深入的学习模式,称为致密全球残余网络,可减少空间信息的损失并提高语境意识。在密集全局剩余网络中,残余网络用于提取不同级别的特征。为了获得更多丰富的多尺度特征,基于所居住的空间金字塔池的密集和全球空间金字塔汇集模块是为了感知并汇总上下文信息。所提出的方法在GF-2道路数据集和公共马萨诸塞航空图像路数据集上获得更好的结果。为了证明我们方法的有效性,我们与四种方法进行比较,如Deeplabv3 +,U-Net,D-LinkNet和Coord-zeLy-Global Model,发现我们的方法的准确性大大更好。此外,密集全球剩余网络也可以有效地提取道路,尤其是树木和建筑物遮挡道路的阴影。此外,我们的方法可以在普遍性实验中成功提取不同发展水平的区域。这表明该方法可以有效地保持道路的完整性和连续性,提高高分辨率遥感图像的道路分割的准确性。

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