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Two-layer generative models for estimating unknown gait kinematics

机译:估计未知步态运动学的两层生成模型

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We propose a two-layer gait modeling framework for estimating unknown gait kinematics from a monocular camera. Dual gait generative models are introduced to represent a human gait both visually and kinematically via a few latent variables. A new manifold learning method is developed to create two sets of gait manifolds that capture the gait variability among different individuals at both whole and part levels and by which the two generative models can be integrated together for video-based gait estimation. A two-stage statistical inference algorithm is employed for whole-part gait estimation. The proposed algorithm was trained on the CMU Mocap data and tested on the HumanEva data, and the experiments show very promising results on estimating the kinematics of unknown gaits.
机译:我们提出了一个两层步态建模框架,用于从单眼相机估计未知的步态运动学。引入双步态生成模型,通过一些潜在变量在视觉和运动学上代表人类的步态。开发了一种新的流形学习方法,以创建两组步态流形,它们捕获了整个个体和部分水平上不同个体之间的步态变异性,并且可以将这两个生成模型集成在一起以进行基于视频的步态估计。采用两阶段统计推断算法进行全步态步态估计。该算法在CMU Mocap数据上进行了训练,并在HumanEva数据上进行了测试,实验在估计未知步态运动学方面显示出非常有希望的结果。

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