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A Concealed Car Extraction Method Based on Full-Waveform LiDAR Data

机译:基于全波形LIDAR数据的隐藏式汽车提取方法

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摘要

Concealed cars extraction from point clouds data acquired by airborne laser scanning has gained its popularity in recent years. However, due to the occlusion effect, the number of laser points for concealed cars under trees is not enough. Thus, the concealed cars extraction is difficult and unreliable. In this paper, 3D point cloud segmentation and classification approach based on full-waveform LiDAR was presented. This approach first employed the autocorrelation G coefficient and the echo ratio to determine concealed cars areas. Then the points in the concealed cars areas were segmented with regard to elevation distribution of concealed cars. Based on the previous steps, a strategy integrating backscattered waveform features and the view histogram descriptor was developed to train sample data of concealed cars and generate the feature pattern. Finally concealed cars were classified by pattern matching. The approach was validated by full-waveform LiDAR data and experimental results demonstrated that the presented approach can extract concealed cars with accuracy more than 78.6% in the experiment areas.
机译:近年来,隐藏的汽车从空中激光扫描所获得的点云提取数据取得了普及。然而,由于遮挡效应,树木下隐藏式汽车的激光点数不够。因此,隐藏式汽车提取难以且不可靠。本文介绍了基于全波形LIDAR的3D点云分割和分类方法。这种方法首先使用自相关G系数和回声比以确定隐藏的汽车区域。然后在隐藏式汽车的高度分布方面分段了隐藏式汽车区域的点。基于先前的步骤,开发了一种整合反向散射波形特征和视图直方图描述符的策略,以培训隐藏式汽车的样本数据并生成特征模式。最后被隐藏的汽车通过模式匹配分类。该方法是通过全波形激光雷达数据验证的,实验结果表明,所提出的方法可以在实验领域的准确性提取隐藏的汽车,精度超过78.6%。

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