加入时间相关对基于svm的行人导航运动分类的影响

Eudald Sangenis;Chi-Shih Jao;Andrei M. Shkel
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引用次数: 0

摘要

在本文中,我们提出了一种利用时间序列支持向量机(SVM)预测算法增强零速度更新(ZUPT)辅助惯性导航系统(INSs)的方法。该方法基于在ZUPT算法中包含速度阈值的时间相关性,该阈值是基于从脚载惯性测量单元确定的19种不同行人活动的分类。该分类对传统的zupt辅助INS进行了改进,首先优化了检测器中的阈值,称为姿态假设最优检测,其次调整了每种分类运动类型的零速度测量方差。实验验证涉及3名受试者,每名受试者进行10次室内导航试验,包括步行、快走、慢跑、跑步、冲刺、向后行走、向后慢跑和回避等活动,试验路径近100 [m]。经过训练的时间序列SVM分类器实现了90.04%的平均分类精度,与独立的INS相比,导航精度提高了250倍,与传统的zupt辅助INS解决方案相比,导航精度提高了3倍。在导航解决方案的垂直漂移方面也有类似的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effect of Adding Time Correlation to SVM-Based Motion Classification in Pedestrian Navigation
In this article, we propose an approach to enhance zero-velocity-update (ZUPT)-aided inertial navigation systems (INSs) with a time series support vector machine (SVM) forecaster algorithm. The approach is based on the inclusion in ZUPT algorithm the time correlation of velocity threshold values based on classification of 19 distinct pedestrian activities determined from a foot-mounted inertial measurement unit. The classification enhances the traditional ZUPT-aided INS by first optimizing the threshold in the detector called stance hypothesis optimal detection and second adjusting zero-velocity measurement variances for each categorized locomotion type. Experimental validation involved three subjects, each conducting 10 trials of indoor navigation, encompassing activities, such as walking, fast walking, jogging, running, sprinting, walking backward, jogging backward, and sidestepping, over a nearly 100 [m] path. The trained time series SVM classifier achieved a 90.04% average classification accuracy, resulting in an improvement in navigation accuracy by a factor of 250 as compared to a standalone INS and by a factor of 3 as compared to a traditional ZUPT-aided INS solution. Comparable improvements in the vertical drift of the navigation solution have been also demonstrated.
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