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首页> 外文期刊>International journal of remote sensing >A scale robust convolutional neural network for automatic building extraction from aerial and satellite imagery
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A scale robust convolutional neural network for automatic building extraction from aerial and satellite imagery

机译:用于自动建筑物的稳压卷积神经网络从空中和卫星图像提取

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摘要

Identifying buildings from remote sensing imagery has been a challenge due to uncertainties from remote sensing imagery and variations in building structure and texture. In this study, we develop a scale robust CNN structure to improve the segmentation accuracy of building data from high-resolution aerial and satellite images. Based on a fully convolutional network, we introduce two Atrous convolutions on the first two lowest-scale layers, respectively, in the decoding step, aiming at enlarging the sight-of-view and integrate semantic information of large buildings. Then, a multi-scale aggregation strategy is applied. The last feature maps of each scale are used to predict the corresponding building labels, and further up-sampled to the original scale and concatenated for the final prediction. In addition, we introduce a combined data augmentation and relative radiometric calibration method for multi-source building extraction. The method enlarges sample spaces and hence the generalization ability of the deep learning models. We validate our developed methods with an aerial dataset of more than 180, 000 buildings with various architectural types, and a satellite image dataset consists of more than 29,000 buildings. The results are compared with several most recent studies. The comparison result shows our neural network outperformed other studies, especially in segmenting scenes of large buildings. The test on transfer learning from aerial dataset to satellite dataset showed our augmentation strategy significantly improved the prediction accuracy; however, further studies are needed to improve the generalization ability of the CNN model.
机译:识别来自遥感图像的建筑物是由于遥感图像的不确定性以及建筑结构和纹理的变化是挑战。在这项研究中,我们开发了一种规模强大的CNN结构,以提高从高分辨率空中和卫星图像构建数据的分割精度。基于完全卷积的网络,我们在解码步骤中分别在前两个最低尺度层上引入了两个不受欢迎的卷曲,旨在扩大大型建筑物的视野和整合语义信息。然后,应用多尺度聚合策略。每种比例的最后一个特征映射用于预测相应的建筑标签,并进一步上采样到原始刻度并连接到最终预测。此外,我们介绍了用于多源建筑提取的组合数据增强和相对放射线校准方法。该方法扩大了样品空间,从而扩大了深度学习模型的泛化能力。我们使用具有各种架构类型的超过180,000个建筑物的空中数据集进行验证,卫星图像数据集由29,000多个建筑物组成。结果与几个最近的研究进行了比较。比较结果表明我们的神经网络优于其他研究,特别是在大型建筑物的分割场景中。从空中数据集到卫星数据集的转移学习测试显示了我们的增强策略显着提高了预测精度;然而,需要进一步的研究来改善CNN模型的泛化能力。

著录项

  • 来源
    《International journal of remote sensing》 |2019年第10期|3308-3322|共15页
  • 作者单位

    Wuhan Univ Sch Remote Sensing & Informat Engn 129 Luoyu Rd Wuhan Hubei Peoples R China;

    Wuhan Univ Sch Remote Sensing & Informat Engn 129 Luoyu Rd Wuhan Hubei Peoples R China;

    Univ Utrecht Dept Phys Geog Utrecht Netherlands;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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