用于单目视频中二维人体姿态跟踪的监督粒子滤波

S. Sedai, D. Huynh, Bennamoun
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引用次数: 5

摘要

在本文中,我们提出了一种结合监督学习和粒子滤波的混合方法来跟踪单目视频序列中人体主体的二维姿态。我们的方法,我们称之为监督粒子滤波方法,包括两个步骤:训练步骤和跟踪步骤。在训练步骤中,我们使用监督学习方法来训练以轮廓描述符为输入并产生2D姿态作为输出的回归器。在跟踪步骤中,将回归量估计的输出姿态与粒子滤波相结合,跟踪每个视频帧中的二维姿态。与粒子过滤器不同,我们的方法不需要任何手动初始化。我们使用HumanEva视频数据集测试了我们的方法,并将其与标准粒子过滤器和单个帧的2D姿态估计进行了比较。我们的实验结果表明,我们的方法可以成功地跟踪长视频序列的姿态,并且比粒子滤波和二维姿态估计更准确地跟踪二维人体姿态。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised particle filter for tracking 2D human pose in monocular video
In this paper, we propose a hybrid method that combines supervised learning and particle filtering to track the 2D pose of a human subject in monocular video sequences. Our approach, which we call a supervised particle filter method, consists of two steps: the training step and the tracking step. In the training step, we use a supervised learning method to train the regressors that take the silhouette descriptors as input and produce the 2D poses as output. In the tracking step, the output pose estimated from the regressors is combined with the particle filter to track the 2D pose in each video frame. Unlike the particle filter, our method does not require any manual initialization. We have tested our approach using the HumanEva video datasets and compared it with the standard particle filter and 2D pose estimation on individual frames. Our experimental results show that our approach can successfully track the pose over long video sequences and that it gives more accurate 2D human pose tracking than the particle filter and 2D pose estimation.
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