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Two-layer dual gait generative models for human motion estimation from a single camera

机译:单层摄像机用于人体运动估计的两层双步态生成模型

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摘要

This paper presents a two-layer gait representation framework for video-based human motion estimation that extends our recent dual gait generative models, visual gait generative model (VGGM) and kinematic gait generative model (KGGM), with a new capability of part-whole gait modeling. Specifically, the idea of gait manifold learning is revisited to capture the gait variability among different individuals at both whole and part levels. A key issue is the selection of an appropriate distance metric to evaluate the dissimilarity between two gaits (either at whole or part levels) that determines an optimal manifold topology. Several metrics are studied and compared in terms of their effectiveness for gait manifold learning at both whole and part levels. This work involves one whole-based and two part-level gait manifolds by which three pairs of KGGM and VGGM can be learned and integrated for part-whole gait modeling. Moreover, a two-stage Monte Carlo Markov Chain (MCMC) inference algorithm is developed for video-based part-whole motion estimation. The proposed algorithm is tested on the HumanEva data and reaches state-of-art results.
机译:本文提出了一种用于基于视频的人类运动估计的两层步态表示框架,该框架扩展了我们最近的双重步态生成模型,视觉步态生成模型(VGGM)和运动步态生成模型(KGGM),并具有部分整体的新功能。步态建模。具体而言,重新审视了步态流形学习的概念,以捕获整个个体和部分水平上不同个体之间的步态变异性。一个关键问题是选择合适的距离度量以评估确定最佳歧管拓扑结构的两个步态(整体或部分步态)之间的差异。研究和比较了几种指标,它们在整体和部分水平上对步态多方面学习的有效性。这项工作涉及一个基于整体的步态歧管和两个基于部分步态的歧管,通过它们可以学习和集成三对KGGM和VGGM来进行部分整体步态建模。此外,针对基于视频的部分整体运动估计,开发了两阶段蒙特卡洛马尔可夫链(MCMC)推理算法。该算法对HumanEva数据进行了测试,并获得了最新的结果。

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