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Efficient particle filtering using RANSAC with application to 3D face tracking

机译:使用RANSAC进行有效的粒子滤波并应用于3D人脸跟踪

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摘要

Particle filtering is a very popular technique for sequential state estimation. However, in high-dimensional cases where the state dynamics are complex or poorly modeled, thousands of particles are usually required for real applications. This paper presents a hybrid sampling solution that combines RANSAC and particle filtering. In this approach, RANSAC provides proposal particles that, with high probability, represent the observation likelihood. Both conditionally independent RANSAC sampling and boosting-like conditionally dependent RANSAC sampling are explored. We show that the use of RANSAC-guided sampling reduces the necessary number of particles to dozens for a full 3D tracking problem. This method is particularly advantageous when state dynamics are poorly modeled. We show empirically that the sampling efficiency (in terms of likelihood) is much higher with the use of RANSAC. The algorithm has been applied to the problem of 3D face pose tracking with changing expression. We demonstrate the validity of our approach with several video sequences acquired in an unstructured environment.
机译:粒子滤波是一种非常流行的用于顺序状态估计的技术。但是,在状态动态复杂或建模较差的高维情况下,实际应用中通常需要数千个粒子。本文提出了一种结合了RANSAC和粒子滤波的混合采样解决方案。在这种方法中,RANSAC提供的提案粒子很有可能代表观察可能性。探索了条件独立的RANSAC采样和升压式条件相关的RANSAC采样。我们表明,使用RANSAC指导的采样可以将完整3D跟踪问题所需的粒子数量减少到数十个。当状态动力学建模较差时,此方法特别有利。我们凭经验表明,使用RANSAC的采样效率(就似然而言)要高得多。该算法已应用于具有变化表情的3D人脸姿势跟踪问题。我们通过在非结构化环境中获取的几个视频序列证明了我们方法的有效性。

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