使用地面激光雷达探测和跟踪人员

Marino Matsuba, M. Hashimoto, Kazuhiko Takahashi
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摘要

人员检测和跟踪是监控、安全、智能交通系统等各个领域的关键问题。本文提出了一种基于环境中的光探测与测距(LiDAR)的人员检测与跟踪方法。使用一维卷积神经网络(1D-CNN)和背景减法实现人物检测。基于背景减法检测感兴趣的区域,并使用1D-CNN检测这些区域中的人。利用交互多模型估计器对被检测的人进行跟踪;人们的位置、速度和行为,如停止、行走和突然冲出,都会被估计出来。利用Velodyne 32层激光雷达进行了仿真和实际实验。实验结果表明,将人跟踪器与使用1D-CNN和背景减除方法的人检测相结合,可以实现准确的多人跟踪。
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People Detection and Tracking Using Ground LiDAR
People detection and tracking are crucial issues in various fields, such as surveillance, security, and intelligent transportation systems. This paper presents a people detection and tracking method using light detection and ranging (LiDAR) set in an environment. People detection is achieved using a one-dimensional convolutional neural network (1D-CNN) together with the background subtraction method. Regions of interest are detected based on the background subtraction method, and people are detected in those regions using 1D-CNN. The detected people are tracked using the interacting multimodel estimator; people positions, velocities, and behaviors, such as stopping, walking, and suddenly rushing out, are estimated. Simulation and real-world experiments are conducted using a Velodyne 32-layer LiDAR. The experimental results show that the people tracker conjunction with people detection using both the 1D-CNN and background subtraction method enables accurate multipeople tracking.
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