Orientation invariant gait matching algorithm based on the Kabsch alignment

R. Subramanian, Sudeep Sarkar, M. Labrador, K. Contino, Christopher Eggert, O. Javed, Jiejie Zhu, Hui Cheng
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引用次数: 22

Abstract

Accelerometer and gyroscope sensors in smart phones capture the dynamics of human gait that can be matched to arrive at identity authentication measures of the person carrying the phone. Any such matching method has to take into account the reality that the phone may be placed at uncontrolled orientations with respect to the human body. In this paper, we present a novel orientation invariant gaitmatching algorithm based on the Kabsch alignment. The algorithm consists of simple, intuitive, yet robust methods for cycle splitting, aligning orientation, and comparing gait signals. We demonstrate the effectiveness of the method using a dataset from 101 subjects, with the phone placed in uncontrolled orientations in the holster and in the pocket, and collected on different days. We find that the orientation invariant gait algorithm results in a significant reduction in error: up to a 9% reduction in equal error rate, from 30.4% to 21.5% when comparing data captured on different days. On the McGill dataset from 20 subjects, which is the other dataset with orientation variation, we find a more pronounced effect; the identification rate increased from 67.5% to 96.5%. On the OU-ISIR data, which has data from 745 subjects, the equal error rates are as low as 6.3%, which is among the best reported in the literature.
基于kabch对齐的方向不变步态匹配算法
智能手机中的加速度计和陀螺仪传感器捕捉人类步态的动态,可以匹配到携带手机的人的身份认证措施。任何这样的匹配方法都必须考虑到手机可能被放置在相对于人体的不受控制的方向上的现实。本文提出了一种新的基于kabch对齐的方向不变步态匹配算法。该算法包括简单、直观、鲁棒的周期分割、定向对齐和步态信号比较方法。我们使用来自101个受试者的数据集来证明该方法的有效性,将手机以不受控制的方向放在皮套和口袋中,并在不同的日子收集。我们发现,方向不变步态算法显著降低了误差:当比较不同日期捕获的数据时,相等错误率降低了9%,从30.4%降至21.5%。在来自20个受试者的麦吉尔数据集上,这是另一个具有取向变化的数据集,我们发现了更明显的效应;鉴别率由67.5%提高到96.5%。在u - isir数据中,有745名受试者的数据,平均错误率低至6.3%,在文献报道中名列前茅。
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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