地面点云图中行人目标的分割方法

Xin Shi, Liang Yu, Pengjie Qin, Zhirui Fan, Fei Liang, Gaojie He
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引用次数: 1

摘要

针对传统行人目标分割方法在步行和慢跑等不同步态下目标轮廓信息分割不完全的问题,提出了一种地面点云图中行人目标的分割方法。首先,提出统计离群点去除与随机样本一致性方法相结合的方法,去除离群点,分割所有平面点云;然后,基于地面点云图,提出一种最大距离搜索方法提取感兴趣区域;最后,使用直通滤波器对感兴趣区域的行人目标进行分割。本文收集了三名行人的四种步态的点云数据,并与传统的欧几里得聚类和基于密度的空间聚类(DBSCAN)聚类进行了比较。结果表明,不同步态下行人目标分割的平均准确率为92.96%。验证了该算法的有效性和先进性。
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Segmentation Method of Pedestrian Object in Ground Point Cloud Image
Aiming at the problem of incomplete segmentation of target contour information in traditional pedestrian target segmentation methods under different gaits such as walking and jogging, this paper presents a segmentation method for pedestrian objects in ground point cloud image. Firstly, statistical outlier removal combined with the random sample consensus method is proposed to remove outliers and segment all plane point clouds. Then, based on the ground point cloud image, a range maximum search method is proposed to extract the region of interest. Finally, the pass-through filter is used to segment pedestrian targets in the region of interest. In this paper, point cloud data of four gaits of three pedestrians are collected and compared with traditional Euclidean Clustering and Density-Based Spatial Clustering of Applications with Noise (DBSCAN) Clustering. The results show that the average accuracy of pedestrian target segmentation under different gait is 92.96%. The validity and advance of the proposed algorithm are proved.
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