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Laser-based detection and tracking of multiple people in crowds

机译:基于激光的人群中多个人的检测和跟踪

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摘要

Laser-based people tracking systems have been developed for mobile robotic, and intelligent surveillance areas. Existing systems rely on laser point clustering method to extract object locations. However, for dense crowd tracking, laser points of different objects are often interlaced and undistinguishable due to measurement noise and they can not provide reliable features. It causes current systems quite fragile and unreliable. This paper presents a novel and robust laser-based dense crowd tracking method. Firstly, we introduce a stable feature extraction method based on accumulated distribution of successive laser frames. With this method, the noise that generates split and merged measurements is smoothed away and the pattern of rhythmic swing legs is utilized to extract each leg of persons. And then, a region coherency property is introduced to construct an efficient measurement likelihood model. The final tracker is based on the combination of independent Kalman filter and Rao-Blackwellized Monte Carlo data association filter (RBMC-DAF). In real experiments, we obtain raw data from multiple registered laser scanners, which measure two legs for each people on the height of 16 cm from horizontal ground. Evaluation with real data shows that the proposed method is robust and effective. It achieves a significant improvement compared with existing laser-based trackers. In addition, the proposed method is much faster than previous works, and can overcome tracking errors resulted from mixed data of two closely situated persons.
机译:已经开发了基于激光的人员跟踪系统,用于移动机器人和智能监视区域。现有系统依靠激光点聚类方法来提取物体位置。但是,对于密集的人群跟踪,由于测量噪声,不同对象的激光点经常交错且无法区分,并且无法提供可靠的功能。它导致当前的系统非常脆弱和不可靠。本文提出了一种新颖且强大的基于激光的密集人群跟踪方法。首先,我们介绍了一种基于连续激光帧累积分布的稳定特征提取方法。使用此方法,可以消除产生拆分和合并测量值的噪声,并使用有节奏的摆腿模式提取人的每条腿。然后,引入区域相干性以构建有效的测量似然模型。最终跟踪器基于独立的Kalman滤波器和Rao-Blackwellized蒙特卡洛数据关联滤波器(RBMC-DAF)的组合。在实际实验中,我们从多个注册的激光扫描仪获取原始数据,这些激光扫描仪在距水平地面16厘米的高度为每个人测量两条腿。实际数据评估表明,该方法是可靠且有效的。与现有的基于激光的跟踪器相比,它实现了重大改进。此外,所提出的方法比以前的工作要快得多,并且可以克服由于两个位置靠近的人的混合数据而导致的跟踪误差。

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