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Building extraction from remote sensing images with deep learning in a supervised manner

机译:以监督方式从遥感图像提取遥感图像

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Building extraction from remote sensing images is a longstanding topic in land use analysis and applications of remote sensing. Variations in shape and appearance of buildings, occlusions and other unpredictable factors increase the hardness of automatic building extraction. Numerous methods have been proposed during the last several decays, but most of these works are task oriented and lack of generalization. This paper applys deep learning to building extraction in a supervised manner. A deep deconvolution neural network with 27 Convolution/Deconvolution weight layers is designed to realize building extraction in pixel level. As such a deep network is prone to overfitting, a data augment method that suits pixel-wise prediction tasks in remote sensing is suggested. Moreover, an overall training and inferencing architecture is proposed. Our methods are finally applied to building extraction tasks and get competitive results with other methods published.
机译:遥感图像的建筑提取是遥感土地利用分析和应用中的长期主题。建筑物的形状和外观的变化,闭塞等不可预测因素增加了自动建筑提取的硬度。在最后几种衰减期间提出了许多方法,但大多数作品都是面向任务和缺乏的概括。本文以监督方式施加深入学习。具有27个卷积/去卷积重量层的深层去卷积神经网络旨在实现像素水平的建筑提取。由于这种深网络容易过度拟合,建议了一种适用于遥感中的像素明智的预测任务的数据增强方法。此外,提出了整体培训和推理架构。我们的方法最终应用于建立提取任务,并通过发布的其他方法获得竞争结果。

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