改进粒子滤波算法中粒子分布对运动目标跟踪的影响

Mir Abbas Daneshyar, M. Nahvi
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引用次数: 2

摘要

目标跟踪是机器视觉中的一个重要问题,有着广泛的应用。一种跟踪方法是基于蒙特卡罗技术的粒子滤波。该方法基于概率密度函数的随机抽样和使用样本权重估计所需变量。本文将颜色直方图模型作为现有观测值来实现粒子滤波算法。为了研究粒子滤波的性能,将该方法与均值移位法进行了比较,结果表明该方法具有更好的滤波性能。与粒子滤波方法相关的一个问题是简并现象。通过修改粒子的分布,避免了粒子权方差的增大,而权方差是导致简并现象的主要原因。将该方法应用于标准数据库,得到了较好的结果。此外,由于粒子分布在不可能的区域,如果存在遮挡,则目标丢失的概率降低,目标跟踪更加成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improvement of moving objects tracking via modified particle distribution in particle filter algorithm
Object tracking is an important issue in machine vision, which has many applications. A tracking method is particle filtering that is based on Monte Carlo techniques. This method is based on random sampling of a probability density function and estimating the desired variable using samples weight. In this paper, particle filter algorithm is implemented by considering the color histogram model as the existing observations. In order to investigate the particle filter performance, a comparison between this technique and the mean shift method is presented which reveals that the proposed method has better performance. A problem associated with particle filter method is degeneracy phenomenon. By modifying the particles distribution, we avoid increasing in the particles weight variance, which is the main reason of degeneracy phenomenon. Applying the proposed method on the standard databases demonstrated better results. Further, since in the proposed scheme the particles are distributed in improbable areas, if any occlusion occurs, the probability of the target missing decreases and the target tracking will be done more successfully.
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