基于微尺度激光雷达的三维点云数据的实时时空人体分割

Yuma Okochi, Hamada Rizk, H. Yamaguchi
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引用次数: 7

摘要

3D识别技术正在迅速发展,使以人为中心的智能环境的应用空前增长。在这些应用程序之上,人类分割是分析和理解这些环境中人类移动性的关键技术。然而,现有的分割技术依赖于深度学习模型,这是计算密集型和数据密集型的解决方案。这阻碍了它们在现实环境中的边缘设备上的实际部署。在本文中,我们介绍了一种新型的微尺寸激光雷达设备,用于了解周围环境中人类的移动。该设备使用基于密度的聚类为捕获的3D点云数据提供了设备上轻量级的人类分割技术。该方法利用连续帧之间的时空关系,显著降低了聚类算法的计算复杂度。我们在现实环境中实现并评估了所提出的技术。结果表明,该方法的人工分割准确率达到99%,处理时间缩短了66%。
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On-the-Fly Spatio-Temporal Human Segmentation of 3D Point Cloud Data By Micro-Size LiDAR
The technology of 3D recognition is evolving rapidly, enabling unprecedented growth of applications towards human-centric intelligent environments. On top of these applications human segmentation is a key technology towards analyzing and understanding human mobility in those environments. However, existing segmentation techniques rely on deep learning models, which are computationally intensive and data-hungry solutions. This hinders their practical deployment on edge devices in realistic environments. In this paper, we introduce a novel micro-size LiDAR device for understanding human mobility in the surrounding environment. The device is supplied with an on-device lightweight human segmentation technique for the captured 3D point cloud data using density-based clustering. The proposed technique significantly reduces the computational complexity of the clustering algorithm by leveraging the Spatiotemporal relation between consecutive frames. We implemented and evaluated the proposed technique in a real-world environment. The results show that the proposed technique obtains a human segmentation accuracy of 99% with a drastic reduction of the processing time by 66%.
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