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Autonomous crowds tracking with box particle filtering and convolution particle filtering

机译:使用盒粒子滤波和卷积粒子滤波进行自主人群跟踪

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摘要

Autonomous systems such as Unmanned Aerial Vehicles (UAVs) need to be able to recognise and track crowds of people, e.g. for rescuing and surveillance purposes. Large groups generate multiple measurements with uncertain origin. Additionally, often the sensor noise characteristics are unknown but measurements are bounded within certain intervals. In this work we propose two solutions to the crowds tracking problem— with a box particle filtering approach and with a convolution particle filtering approach. The developed filters can cope with the measurement origin uncertainty in an elegant way, i.e. resolve the data association problem. For the box particle filter (PF) we derive a theoretical expression of the generalised likelihood function in the presence of clutter. An adaptive convolution particle filter (CPF) is also developed and the performance of the two filters is compared with the standard sequential importance resampling (SIR) PF. The pros and cons of the two filters are illustrated over a realistic scenario (representing a crowd motion in a stadium) for a large crowd of pedestrians. Accurate estimation results are achieved.
机译:诸如无人机(UAV)之类的自主系统需要能够识别和跟踪人群,例如用于救援和监视目的。大型团体会产生多个来源不确定的测量结果。另外,通常传感器的噪声特性是未知的,但是测量值限制在一定的间隔内。在这项工作中,我们提出了两种针对人群跟踪问题的解决方案-箱形粒子滤波方法和卷积粒子滤波方法。开发的滤波器可以以优雅的方式应对测量原点的不确定性,即解决数据关联问题。对于盒式粒子滤波器(PF),我们导出了存在杂波时广义似然函数的理论表达式。还开发了自适应卷积粒子滤波器(CPF),并将两个滤波器的性能与标准顺序重要性重采样(SIR)PF进行了比较。在大量行人的实际场景(代表体育场中的人群运动)中说明了这两个过滤器的优缺点。获得了准确的估计结果。

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