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3D Human Pose Estimation with a Catadioptric Sensor in Unconstrained Environments Using an Annealed Particle Filter

机译:3D使用退火粒子过滤器的无约束环境中的一种人为姿势估计

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摘要

The purpose of this paper is to investigate the problem of 3D human tracking in complex environments using a particle filter with images captured by a catadioptric vision system. This issue has been widely studied in the literature on RGB images acquired from conventional perspective cameras, while omnidirectional images have seldom been used and published research works in this field remains limited. In this study, the Riemannian varieties was considered in order to compute the gradient on spherical images and generate a robust descriptor used along with an SVM classifier for human detection. Original likelihood functions associated with the particle filter are proposed, using both geodesic distances and overlapping regions between the silhouette detected in the images and the projected 3D human model. Our approach was experimentally evaluated on real data and showed favorable results compared to machine learning based techniques about the 3D pose accuracy. Thus, the Root Mean Square Error (RMSE) was measured by comparing estimated 3D poses and truth data, resulting in a mean error of 0.065 m when walking action was applied.
机译:本文的目的是使用粒子滤波器研究复杂环境中的3D人体跟踪问题,该粒子滤波器具有由分发视觉系统捕获的图像。在传统的透视相机获取的RGB图像上的文献中已广泛研究了这个问题,而全向图像很少被使用,并且该领域的公开研究工作仍然有限。在这项研究中,考虑了riemananian品种以计算球面图像上的梯度并产生与人类检测的SVM分类器一起使用的稳健描述符。建议使用与图像中检测到的轮廓和投影3D人体模型之间的轮廓之间的测地距离和重叠区域相关联的原始似然函数。我们的方法是在实验上进行实验评估的真实数据,并与基于机器学习的技术进行了关于3D姿态精度的技术的良好结果。因此,通过比较估计的3D姿势和真实数据来测量根均方误差(RMSE),从而在应用行走动作时产生0.065米的平均误差。

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