A practical technique for gait recognition on curved and straight trajectories

Fatimah Abdulsattar, J. Carter
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引用次数: 2

Abstract

Many studies show the effectiveness of gait in surveillance and access control scenarios. However, appearance changes due to walking direction changes impose a challenge for gait recognition techniques that assume people only walk in a straight line. In this paper, the effect of walking along straight and curved path is studied by proposing a practical technique which is based on the three key frames in the start, middle and end of the gait cycle. The position of these frames is estimated in 3D space which is then used to estimate the local walking direction in the first and second part of the cycle. The technique used 3D volume sequences of the people to adapt to changes in the walking direction. The performance is evaluated using a newly collected dataset and the Kyushu University 4D Gait Dataset, containing people walking in straight lines and curves. With the proposed technique, we obtain a correct classification rate of 98% for matching straight with straight walking and 81% for matching straight with curved walking averaged over both datasets. The variation in walking patterns when a person walks along a straight or curved path is most likely to be responsible for the difference. In support of this, the recognition rate when matching curved with curved walking is 99% on our dataset.
一种基于曲线和直线轨迹的实用步态识别技术
许多研究表明步态在监控和访问控制场景中的有效性。然而,由于行走方向的变化而引起的外观变化对步态识别技术提出了挑战,步态识别技术假设人们只在直线上行走。本文通过提出一种基于步态周期开始、中间和结束三个关键帧的实用技术,研究了直线和曲线路径行走的效果。在3D空间中估计这些帧的位置,然后使用它来估计循环的第一部分和第二部分的局部行走方向。该技术使用人的三维体序列来适应行走方向的变化。使用新收集的数据集和九州大学4D步态数据集对性能进行评估,其中包含直线和曲线行走的人。在两个数据集的平均值上,我们得到直线与直线行走匹配的正确分类率为98%,直线与曲线行走匹配的正确分类率为81%。当一个人沿着直线或弯曲的路径行走时,行走方式的变化最有可能是造成这种差异的原因。为了支持这一点,在我们的数据集上,曲线与曲线行走匹配的识别率为99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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