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A Y-Net deep learning method for road segmentation using high-resolution visible remote sensing images

机译:一种使用高分辨率可见遥感影像进行道路分割的Y-Net深度学习方法

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摘要

Road segmentation from high-resolution visible remote sensing images provides an effective way for automatic road network forming. Recently, deep learning methods based on convolutional neural networks (CNNs) are widely applied in road segmentation. However, it is a challenge for most CNN-based methods to achieve high segmentation accuracy when processing high-resolution visible remote sensing images with rich details. To handle this problem, we propose a road segmentation method based on a Y-shaped convolutional network (indicated as Y-Net). Y-Net contains a two-arm feature extraction module and a fusion module. The feature extraction module includes a deep downsampling-to-upsampling sub-network for semantic features and a convolutional sub-network without downsampling for detail features. The fusion module combines all features for road segmentation. Benefiting from this scheme, the Y-Net can well segment multi-scale roads (both wide and narrow roads) from high-resolution images. The testing and comparative experiments on a public dataset and a private dataset show that Y-Net has higher segmentation accuracy than four other state-of-art methods, FCN (Fully Convolutional Network), U-Net, SegNet, and FC-DenseNet (Fully Convolutional DenseNet). Especially, Y-Net accurately segments contours of narrow roads, which are missed by the comparative methods.
机译:从高分辨率的可见遥感图像进行道路分割为自动道路网络形成提供了有效的方法。近年来,基于卷积神经网络(CNN)的深度学习方法已广泛应用于道路分割。然而,当处理具有丰富细节的高分辨率可见遥感图像时,要实现高分割精度对于大多数基于CNN的方法来说是一个挑战。为了解决这个问题,我们提出了一种基于Y形卷积网络(表示为Y-Net)的道路分割方法。 Y-Net包含一个双臂特征提取模块和一个融合模块。特征提取模块包括用于语义特征的从下采样到上采样的深层子网络和没有对细节特征进行下采样的卷积子网络。融合模块结合了道路分割的所有功能。得益于此方案,Y-Net可以从高分辨率图像中很好地分割多尺度道路(宽阔的道路和狭窄的道路)。在公共数据集和私有数据集上进行的测试和比较实验表明,Y-Net的分割准确度比其他四种最新方法FCN(完全卷积网络),U-Net,SegNet和FC-DenseNet(完全卷积DenseNet)。尤其是,Y-Net可以准确地分割狭窄道路的轮廓,而比较方法会忽略这些轮廓。

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  • 来源
    《Remote sensing letters》 |2019年第6期|381-390|共10页
  • 作者单位

    Key Laboratory of Space Utilization Technology and Engineering Center for Space Utilization Chinese Academy of Sciences Beijing China;

    Key Laboratory of Space Utilization Technology and Engineering Center for Space Utilization Chinese Academy of Sciences Beijing China School of Software Tsinghua University Beijing China;

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