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On incremental collaborative appearance model and regional particle filtering for lip region tracking

机译:关于唇缘跟踪的增量协同外观模型和区域粒子滤波

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摘要

Lip region tracking is of crucial importance to the better understanding of visual speech in a computer-aided system. This paper presents an efficient lip region tracking approach in virtue of incremental collaborative appearance model and regional particle filtering. Within this approach, we first learn an incremental weighted appearance model (IWAM) through adaptively updating the time-varying mean and eigenbasis by considering the temporal and spatial weights, and then discriminatively exploit an incremental sparse subspace model (ISSM) by considering the occlusions and background clutters. Accordingly, the collaboration of the IWAM and ISSM leads to a more reliable and flexible lip region representation. Subsequently, we propose a regional particle filtering for motion state estimation, by taking scale size and rotation estimation, reducing the computational load and alleviating the tracking drift into consideration. Furthermore, the affinely warped image patches corresponding to the rank-2-optimal states are employed to incrementally update the IWAM and ISSM synchronously. The extensive experiments conducted on different challenging sequences have shown that the improvement from the proposed framework compared to the state-of-the-art systems, are over 15%, 18% and 20%, on reducing the errors of center location, scale size and rotation angle estimations, respectively.
机译:唇部区域跟踪对于更好地了解计算机辅助系统中的视觉语音至关重要。本文呈上具有增量协同外观模型和区域粒子滤波的高效唇形区域跟踪方法。在这种方法中,我们首先通过考虑时间和空间权重自适应地更新时变平均值和特征基,然后通过考虑遮挡和遮挡来判别疏松和背景夹斗。因此,IWAM和ISSM的协作导致更可靠且灵活的唇部区域表示。随后,通过采用规模尺寸和旋转估计,提出了运动状态估计的区域粒子滤波,从而减少计算负荷并减轻跟踪漂移考虑。此外,采用与等级-2-Optimal状态相对应的束扭曲图像贴片来同步逐步更新IWAM和ISSM。在不同挑战性序列上进行的广泛实验表明,与最先进的系统相比,拟议框架的改进超过了15%,18%和20%,减少了中心位置的误差,比例尺寸分别和旋转角度估计。

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