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Posture Constraints for Bayesian Human Motion Tracking

机译:贝叶斯人体运动跟踪的姿势约束

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摘要

One of the most used techniques for full-body human tracking consists of estimating the probability of the parameters of a human body model over time by means of a particle filter. However, given the high-dimensionality of the models to be tracked, the number of required particles to properly populate the space of solutions makes the problem computationally very expensive. To overcome this, we present an efficient scheme which makes use of an action-specific model of human postures to guide the prediction step of the particle filter, so only feasible human postures are considered. As a result, the prediction step of this model-based tracking approach samples from a first order motion model only those postures which are accepted by our action-specific model. In this manner, particles are propagated to locations in the search space with most a posteriori information avoiding particle wastage. We show that this scheme improves the efficiency and accuracy of the overall tracking approach.
机译:用于全身人体跟踪的最常用技术之一是借助粒子滤波器估算随时间变化的人体模型参数的概率。但是,考虑到要跟踪的模型的高维性,正确填充解空间所需的粒子数量使问题在计算上非常昂贵。为了克服这个问题,我们提出了一种有效的方案,该方案利用特定于动作的人体姿势模型来指导粒子滤波器的预测步骤,因此仅考虑可行的人体姿势。结果,这种基于模型的跟踪方法的预测步骤仅从一阶运动模型中采样,这些是我们特定于动作的模型所接受的姿势。以这种方式,粒子以大多数后验信息传播到搜索空间中的位置,从而避免了粒子浪费。我们表明,该方案提高了整体跟踪方法的效率和准确性。

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