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首页> 外文期刊>Journal of Applied Remote Sensing >Deep convolutional neural networks for building extraction from orthoimages and dense image matching point clouds
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Deep convolutional neural networks for building extraction from orthoimages and dense image matching point clouds

机译:深度卷积神经网络,用于建筑物提取与致密图像匹配点云

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摘要

Automatic extraction of buildings from remote sensing data is an attractive research topic, useful for several applications, such as cadastre and urban planning. This is mainly due to the inherent artifacts of the used data and the differences in viewpoint, surrounding environment, and complex shape and size of the buildings. This paper introduces an efficient deep learning framework based on convolutional neural networks (CNNs) toward building extraction from orthoimages. In contrast to conventional deep approaches in which the raw image data are fed as input to the deep neural network, in this paper the height information is exploited as an additional feature being derived from the application of a dense image matching algorithm. As test sites, several complex urban regions of various types of buildings, pixel resolutions and types of data are used, located in Vaihingen in Germany and in Perissa in Greece. Our method is evaluated using the rates of completeness, correctness, and quality and compared with conventional and other "shallow" learning paradigms such as support vector machines. Experimental results indicate that a combination of raw image data with height information, feeding as input to a deep CNN model, provides potentials in building detection in terms of robustness, flexibility, and efficiency.
机译:自动提取遥感数据的建筑物是一个有吸引力的研究主题,可用于若干应用,如肉豆蔻和城市规划。这主要是由于使用的数据的固有伪像以及视点,周围环境以及建筑物的复杂形状和大小的差异。本文介绍了基于卷积神经网络(CNNS)的高效深度学习框架,朝向从正弦贴图建造提取。与将原始图像数据被馈送为深神经网络的输入的传统深度方法相比,在本文中,高度信息被利用作为从应用致密图像匹配算法的应用得出的附加特征。作为测试网站,使用各种类型的建筑物,像素分辨率和数据类型的几个复杂的城市地区,位于德国的Vaihingen和希腊佩里斯。我们的方法是使用完整性,正确性和质量的速度进行评估,以及与传统和其他“浅”学习范例相比,如支持向量机。实验结果表明,用高度信息的原始图像数据组合,作为输入到深度CNN模型的输入,在鲁棒性,灵活性和效率方面提供了建筑物检测的潜力。

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