基于低水平运动的步态相位估计

B. Daubney, D. Gibson, N. Campbell
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引用次数: 4

摘要

本文提出了一种仅使用低水平运动就能从一系列图像中鲁棒估计人类行走步态相位的方法。我们采用的方法是首先学习我们期望观察到的每个主要肢体的轨迹的统计运动模型。然后,我们使用标准特征跟踪器从图像序列中提取稀疏的运动特征云。通过将跟踪特征的运动与我们的模型进行比较,并对所有特征点进行积分,HMM可以用来估计最可能的相位序列。然后,通过使用粒子滤波来跟踪前景主体,将该方法扩展到平移不变性。实验结果表明,该系统能够以较高的精度提取步态相位,对步行者高度、步态频率和个体步态特征的变化具有鲁棒性。这项工作的目的是提出这样一个问题:“如果我们选择抛弃所有的外观线索,只依赖动作,我们能提取多少信息?””。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating Gait Phase using Low-Level Motion
This paper presents a method that is capable of robustly estimating gait phase of a human walking from a sequence of images using only low-level motion. The approach we adopt is first to learn statistical motion models of the trajectories we would expect to observe for each of the main limbs. We then extract a sparse cloud of motion features from an image sequence using a standard feature tracker. By comparing the motion of the tracked features to our models and integrating over all feature points, a HMM can be used to estimate the most likely sequence of phases. This method is then extended to be invariant to translation by using a particle filter to track the dominant foreground object. Experimental results show that the presented system is capable of extracting gait phase to a high level of accuracy, demonstrating robustness to changes in height of the walker, gait frequency and individual gait characteristics. The purpose of this work is to ask the question "how much information can we extract if we choose to throw away all appearance cues and rely only on motion? ".
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