Prior Knowledge Based Motion Model Representation

A. Sappa, Niki Aifanti, S. Malassiotis, M. Strintzis
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引用次数: 0

Abstract

This paper presents a new approach for human walking modeling from monocular image sequences. A kinematics model and a walking motion model are introduced in order to exploit prior knowledge. The proposed technique consists of two steps. Initially, an efficient feature point selection and tracking approach is used to compute feature points’ trajectories. Peaks and valleys of these trajectories are used to detect key frames— frames where both legs are in contact with the floor. Secondly, motion models associated with each joint are locally tuned by using those key frames. Differently than previous approaches, this tuning process is not performed at every frame, reducing CPU time. In addition, the movement’s frequency is defined by the elapsed time between two consecutive key frames, which allows handling walking displacement at different speed. Experimental results with different video sequences are presented.
基于先验知识的运动模型表示
提出了一种基于单目图像序列的人体行走建模新方法。为了利用先验知识,引入了运动学模型和行走运动模型。所建议的技术包括两个步骤。首先,采用一种高效的特征点选择和跟踪方法计算特征点的轨迹。这些轨迹的波峰和波谷被用来检测关键帧——两条腿都与地面接触的帧。其次,利用这些关键帧对与每个关节相关的运动模型进行局部调整。与以前的方法不同,此调优过程不是在每一帧上执行,从而减少了CPU时间。此外,运动的频率由两个连续关键帧之间的时间来定义,这允许以不同的速度处理行走位移。给出了不同视频序列下的实验结果。
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