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Loose-limbed People: Estimating 3D Human Pose and Motion Using Non-parametric Belief Propagation

机译:松散人群:使用非参数信念传播估算3D人体姿势和运动

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摘要

We formulate the problem of 3D human pose estimation and tracking as one of inference in a graphical model. Unlike traditional kinematic tree representations, our model of the body is a collection of loosely-connected body-parts. In particular, we model the body using an undirected graphical model in which nodes correspond to parts and edges to kinematic, penetration, and temporal constraints imposed by the joints and the world. These constraints are encoded using pair-wise statistical distributions, that are learned from motion-capture training data. Human pose and motion estimation is formulated as inference in this graphical model and is solved using Particle Message Passing (PaMPas). PaMPas is a form of non-parametric belief propagation that uses a variation of particle filtering that can be applied over a general graphical model with loops. The loose-limbed model and decentralized graph structure allow us to incorporate information from “bottom-up” visual cues, such as limb and head detectors, into the inference process. These detectors enable automatic initialization and aid recovery from transient tracking failures. We illustrate the method by automatically tracking people in multi-view imagery using a set of calibrated cameras and present quantitative evaluation using the HumanEva dataset.
机译:我们将3D人体姿势估计和跟踪问题公式化为图形模型中的推理之一。与传统的运动树表示法不同,我们的身体模型是一组松散连接的身体部位。特别是,我们使用无向图形模型对身体建模,其中节点对应于零件和边缘,以适应关节和世界施加的运动,穿透和时间约束。这些约束是使用成对统计分布编码的,该统计分布是从运动捕捉训练数据中学到的。在此图形模型中将人体姿势和运动估计公式化为推论,并使用粒子消息传递(PaMPas)进行求解。 PaMPas是非参数置信传播的一种形式,它使用粒子滤波的一种变体,可以将其应用于带有循环的一般图形模型上。宽松的模型和分散的图形结构使我们能够将“自下而上”的视觉提示(例如肢体和头部检测器)中的信息纳入推理过程。这些检测器可实现自动初始化,并有助于从瞬态跟踪故障中恢复。我们通过使用一组经过校准的相机自动跟踪多视图图像中的人物并使用HumanEva数据集进行定量评估来说明该方法。

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