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首页> 外文期刊>Gait & posture >Gait phase detection and discrimination between walking-jogging activities using hidden Markov models applied to foot motion data from a gyroscope
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Gait phase detection and discrimination between walking-jogging activities using hidden Markov models applied to foot motion data from a gyroscope

机译:使用隐马尔可夫模型对陀螺仪的脚部运动数据进行步态相位检测和步行慢跑活动之间的区分

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摘要

In this paper we present a classifier based on a hidden Markov model (HMM) that was applied to a gait treadmill dataset for gait phase detection and walking/jogging discrimination. The gait events foot strike, foot flat, heel off, toe off were detected using a uni-axial gyroscope that measured the foot instep angular velocity in the sagittal plane. Walking/jogging activities were discriminated by processing gyroscope data from each detected stride. Supervised learning of the classifier was undertaken using reference data from an optical motion analysis system. Remarkably good generalization properties were achieved across tested subjects and gait speeds. Sensitivity and specificity of gait phase detection exceeded 94% and 98%, respectively, with timing errors that were less than 20. ms, on average; the accuracy of walking/jogging discrimination was approximately 99%.
机译:在本文中,我们提出了一种基于隐马尔可夫模型(HMM)的分类器,该分类器已应用于步态跑步机数据集,用于步态相位检测和步行/慢跑识别。使用单轴陀螺仪检测脚步,脚扁平,脚跟脱开,脚趾脱开的步态事件,该单轴陀螺仪测量矢状面中脚背的角速度。通过处理来自每个检测到的步幅的陀螺仪数据来区分步行/慢跑活动。使用来自光学运动分析系统的参考数据进行分类器的监督学习。跨测试对象和步态速度获得了非常好的泛化性能。步态相位检测的灵敏度和特异性分别超过94%和98%,平均计时误差小于20 ms。步行/慢跑判别的准确性约为99%。

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