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EFFICIENT LARGE-SCALE AIRBORNE LIDAR DATA CLASSIFICATION VIA FULLY CONVOLUTIONAL NETWORK

机译:通过完全卷积网络高效的大规模机载LIDAR数据分类

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Nowadays, we are witnessing an increasing availability of large-scale airborne LiDAR (Light Detection and Ranging) data, that greatly improve our knowledge of urban areas and natural environment. In order to extract useful information from these massive point clouds, appropriate data processing is required, including point cloud classification. In this paper we present a deep learning method to efficiently perform the classification of large-scale LiDAR data, ensuring a good trade-off between speed and accuracy. The algorithm employs the projection of the point cloud into a two-dimensional image, where every pixel stores height, intensity, and echo information of the point falling in the pixel. The image is then segmented by a Fully Convolutional Network (FCN), assigning a label to each pixel and, consequently, to the corresponding point. In particular, the proposed approach is applied to process a dataset of 7700 km2 that covers the entire Friuli Venezia Giulia region (Italy), allowing to distinguish among five classes (ground, vegetation, roof, overground and power line), with an overall accuracy of 92.9%.
机译:如今,我们目睹了大规模空中激光器(光检测和测距)数据的增加,这大大提高了我们对城市地区和自然环境的知识。为了从这些大量点云中提取有用的信息,需要适当的数据处理,包括点云分类。在本文中,我们提出了一种深度学习方法,有效地执行大型激光雷达数据的分类,确保速度和准确性之间的良好折衷。该算法采用点云的投影到二维图像中,其中每个像素存储落在像素中的点的高度,强度和回波信息。然后,图像被完全卷积网络(FCN)分段,将标签分配给每个像素,并且因此,到对应点。特别是,拟议的方法适用于处理7700平方公里的数据集,涵盖整个Friuli Venezia Giulia地区(意大利),允许区分五类(地面,植被,屋顶,高电源线),整体准确性92.9%。

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