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A model-based approach for estimating human 3D poses in static images

机译:基于模型的静态图像中人体3D姿势估计方法

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摘要

Estimating human body poses in static images is important for many image understanding applications including semantic content extraction and image database query and retrieval. This problem is challenging due to the presence of clutter in the image, ambiguities in image observation, unknown human image boundary, and high-dimensional state space due to the complex articulated structure of the human body. Human pose estimation can be made more robust by integrating the detection of body components such as face and limbs, with the highly constrained structure of the articulated body. In this paper, a data-driven approach based on Markov chain Monte Carlo (DD-MCMC) is used, where component detection results generate state proposals for 3D pose estimation. To translate these observations into pose hypotheses, we introduce the use of "proposal maps," an efficient way of consolidating the evidence and generating 3D pose candidates during the MCMC search. Experimental results on a set of test images show that the method is able to estimate the human pose in static images of real scenes.
机译:估计静态图像中的人体姿势对于许多图像理解应用程序非常重要,包括语义内容提取以及图像数据库查询和检索。由于图像中存在混乱,图像观察中的歧义,未知的人类图像边界以及由于人体复杂的关节结构而导致的高维状态空间,因此该问题具有挑战性。通过将诸如面部和四肢之类的身体成分的检测与铰接式身体的高度受限结构集成在一起,可以使人体姿势估计更加可靠。在本文中,使用了基于马尔可夫链蒙特卡罗(DD-MCMC)的数据驱动方法,其中组件检测结果生成了用于3D姿态估计的状态提议。为了将这些观察结果转化为姿势假设,我们引入了“建议图”的使用,这是一种在MCMC搜索过程中巩固证据并生成3D姿势候选者的有效方法。在一组测试图像上的实验结果表明,该方法能够估计真实场景的静态图像中的人体姿势。

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