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Robust Human Tracking Using a 3D LiDAR and Point Cloud Projection for Human-Following Robots

Sora Kitamoto, Yutaka HIROI, Kenzaburo Miyawaki, Akinori Ito

Year
2025
Citations
2
Access
Open access

Abstract

Human tracking is a fundamental technology for mobile robots that work with humans. Various devices are used to observe humans, such as cameras, RGB-D sensors, millimeter-wave radars, and laser range finders (LRF). Typical LRF measurements observe only the surroundings on a particular horizontal plane. Human recognition using an LRF has a low computational load and is suitable for mobile robots. However, it is vulnerable to variations in human height, potentially leading to detection failures for individuals taller or shorter than the standard height. This work aims to develop a method that is robust to height differences among humans using a 3D LiDAR. We observed the environment using a 3D LiDAR and projected the point cloud onto a single horizontal plane to apply a human-tracking method for 2D LRFs. We investigated the optimal height range of the point clouds for projection and found that using 30% of the point clouds from the top of the measured person provided the most stable tracking. The results of the path-following experiments revealed that the proposed method reduced the proportion of outlier points compared to projecting all the points (from 3.63% to 1.75%). As a result, the proposed method was effective in achieving robust human following.

Keywords

Point cloudLidarComputer visionArtificial intelligenceComputer scienceProjection (relational algebra)OutlierMobile robotTracking (education)Range (aeronautics)

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