利用在线参数自适应提高粒子滤波视觉跟踪器的鲁棒性

Andrew D. Bagdanov, A. Bimbo, F. Dini, W. Nunziati
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引用次数: 12

摘要

在基于粒子滤波的视觉跟踪器中,动态速度分量通常被纳入状态更新方程中。在这些情况下,模型更新阶段的不确定性可能会以意想不到和不希望的方式被放大,从而导致跟踪器的错误行为。此外,使用弱外观模型会使粒子滤波提供的估计不准确。为了解决这个问题,我们提出了一种连续自适应的方法来估计粒子滤波器中的不确定性,一种平衡其静态和动态元素的不确定性的方法。我们在一组10个视频序列上提供了所得到的粒子滤波跟踪器的定量性能评估。结果报告的一个指标,可用于客观地评价视觉跟踪器的性能。该度量用于比较改进的粒子滤波跟踪器和连续自适应平均位移跟踪器。结果表明,通过自适应参数估计,粒子滤波的性能得到了显著提高,特别是在遮挡和不规则非线性目标运动的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the robustness of particle filter-based visual trackers using online parameter adaptation
In particle filter-based visual trackers, dynamic velocity components are typically incorporated into the state update equations. In these cases, there is a risk that the uncertainty in the model update stage can become amplified in unexpected and undesirable ways, leading to erroneous behavior of the tracker. Moreover, the use of a weak appearance model can make the estimates provided by the particle filter inaccurate. To deal with this problem, we propose a continuously adaptive approach to estimating uncertainty in the particle filter, one that balances the uncertainty in its static and dynamic elements. We provide quantitative performance evaluation of the resulting particle filter tracker on a set of ten video sequences. Results are reported in terms of a metric that can be used to objectively evaluate the performance of visual trackers. This metric is used to compare our modified particle filter tracker and the continuously adaptive mean shift tracker. Results show that the performance of the particle filter is significantly improved through adaptive parameter estimation, particularly in cases of occlusion and erratic, nonlinear target motion.
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