Poselet条件图像结构

L. Pishchulin, Mykhaylo Andriluka, Peter Gehler, B. Schiele
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引用次数: 337

摘要

本文研究了静止图像中人体姿态估计的挑战性问题。我们观察到,尽管身体关节的高度可变性,人类的运动和活动往往同时约束多个身体部位的位置。对这种高阶零件依赖关系进行建模似乎是以更昂贵的推理为代价的,这导致它们在最先进的方法中的使用受到限制。在本文中,我们提出了一个包含高阶部分依赖而保持效率的模型。我们通过定义一个条件模型来实现这一点,其中所有身体部位都是先验连接的,但一旦图像观测可用,它就变成了一个易于处理的树状结构图像结构模型。为了导出一组条件变量,我们依赖于基于姿态的特征,这些特征已被证明对人的检测是有效的,但到目前为止,在关节人体姿态估计方面的应用有限。我们在三个公开可用的姿态估计基准上证明了我们的方法的有效性,在每种情况下都改进或与最先进的状态保持一致。
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Poselet Conditioned Pictorial Structures
In this paper we consider the challenging problem of articulated human pose estimation in still images. We observe that despite high variability of the body articulations, human motions and activities often simultaneously constrain the positions of multiple body parts. Modelling such higher order part dependencies seemingly comes at a cost of more expensive inference, which resulted in their limited use in state-of-the-art methods. In this paper we propose a model that incorporates higher order part dependencies while remaining efficient. We achieve this by defining a conditional model in which all body parts are connected a-priori, but which becomes a tractable tree-structured pictorial structures model once the image observations are available. In order to derive a set of conditioning variables we rely on the poselet-based features that have been shown to be effective for people detection but have so far found limited application for articulated human pose estimation. We demonstrate the effectiveness of our approach on three publicly available pose estimation benchmarks improving or being on-par with state of the art in each case.
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