Joint Segmentation and Pose Tracking of Human in Natural Videos

Taegyu Lim, Seunghoon Hong, Bohyung Han, J. Han
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引用次数: 16

Abstract

We propose an on-line algorithm to extract a human by foreground/background segmentation and estimate pose of the human from the videos captured by moving cameras. We claim that a virtuous cycle can be created by appropriate interactions between the two modules to solve individual problems. This joint estimation problem is divided into two sub problems, foreground/background segmentation and pose tracking, which alternate iteratively for optimization, segmentation step generates foreground mask for human pose tracking, and human pose tracking step provides fore-ground response map for segmentation. The final solution is obtained when the iterative procedure converges. We evaluate our algorithm quantitatively and qualitatively in real videos involving various challenges, and present its outstanding performance compared to the state-of-the-art techniques for segmentation and pose estimation.
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自然视频中人体关节分割与姿态跟踪
提出了一种通过前景/背景分割提取人的在线算法,并从移动摄像机拍摄的视频中估计人的姿态。我们认为,通过两个模块之间的适当互动,可以创造一个良性循环,以解决个别问题。该联合估计问题分为前景/背景分割和姿态跟踪两个子问题,迭代交替进行优化,分割步骤生成用于人体姿态跟踪的前景掩模,人体姿态跟踪步骤提供用于分割的前景响应图。当迭代过程收敛时得到最终解。我们在涉及各种挑战的真实视频中定量和定性地评估了我们的算法,并与最先进的分割和姿态估计技术相比,展示了其出色的性能。
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