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基于一致最大覆盖的人体姿态估计。

Human Pose Estimation Using Consistent Max Covering.

出版信息

IEEE Trans Pattern Anal Mach Intell. 2011 Sep;33(9):1911-8. doi: 10.1109/TPAMI.2011.92. Epub 2011 May 12.

Abstract

A novel consistent max-covering method is proposed for human pose estimation. We focus on problems in which a rough foreground estimation is available. Pose estimation is formulated as a jigsaw puzzle problem in which the body part tiles maximally cover the foreground region, match local image features, and satisfy body plan and color constraints. This method explicitly imposes a global shape constraint on the body part assembly. It anchors multiple body parts simultaneously and introduces hyperedges in the part relation graph, which is essential for detecting complex poses. Using multiple cues in pose estimation, our method is resistant to cluttered foregrounds. We propose an efficient linear method to solve the consistent max-covering problem. A two-stage relaxation finds the solution in polynomial time. Our experiments on a variety of images and videos show that the proposed method is more robust than previous locally constrained methods.

摘要

提出了一种新的一致最大覆盖方法用于人体姿态估计。我们专注于存在粗略前景估计的问题。姿态估计被公式化为拼图问题,其中身体部位瓦片最大限度地覆盖前景区域,匹配局部图像特征,并满足身体计划和颜色约束。该方法明确地对身体部位装配施加全局形状约束。它同时锚定多个身体部位,并在部分关系图中引入超边,这对于检测复杂姿势至关重要。我们的方法使用姿态估计中的多个线索,能够抵抗杂乱的前景。我们提出了一种有效的线性方法来解决一致的最大覆盖问题。两阶段松弛在多项式时间内找到解决方案。我们在各种图像和视频上的实验表明,与以前的局部约束方法相比,所提出的方法更具鲁棒性。

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