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MCMC-based Feature-guided Particle Filtering for Tracking Moving Objects from a Moving Platform

机译:基于MCMC的特征导向粒子滤波,用于跟踪移动平台的移动物体

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This paper proposes a Markov Chain Monte Carlo based feature-guided particle filtering algorithm to track moving objects observed from a camera on a moving platform. Sudden camera or object motion is the typical problem that causes tracking performance sharply deteriorate. It is inadequate to use classical recursive Bayesian estimation to track moving objects observed by a rapid-moving and unstable camera since the method could not resolve the sudden motion problem. We develop a robust and unconstrained tracking algorithm to overcome the tracking failure issues. Markov Chain Monte Carlo (MCMC) technique is adopted to efficiently realize the feature-guided particle filter. Experiment results show that the method demonstrates robust tracking performance without assistance of foreground segmentation and performs accurately in severe tracking environment.
机译:本文提出了一种基于Markov链蒙特卡洛的特征引导粒子滤波算法,以跟踪从移动平台上观察到的移动物体。突然的相机或对象运动是典型的问题,导致跟踪性能急剧恶化。使用古典递归贝叶斯估计来跟踪快速移动和不稳定的相机观察的移动物体是不充分的,因为该方法无法解决突然的运动问题。我们开发了一种强大而无关的跟踪算法,以克服跟踪失败问题。 Markov链蒙特卡罗(MCMC)技术被采用以有效地实现特征引导粒子过滤器。实验结果表明,该方法在没有前景分割的情况下展示了鲁棒的跟踪性能,并在严重跟踪环境中准确地执行。

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