改进智能手机人体活动识别系统中坐、站、躺的分类

N. A. Capela, E. Lemaire, N. Baddour
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引用次数: 23

摘要

人体活动识别(HAR)允许医疗保健专家获得有关患者活动的临床有用信息。当用智能手机描述静止状态时,HAR通常依赖于手机的方向来区分坐、站和躺。虽然手机的方向可以有效地识别一个人是躺着的,但坐着和站着可能会被错误地分类,因为骨盆的方向可能相似。因此,从这些数据中训练分类器是困难的。本文提出了一种包含坐姿转换阶段和坐姿转换阶段的分层分类器,以改进坐姿-站立分类。为了进行评估,年轻(26±8.9岁)和老年(73±5.9岁)的参与者在右前腰上佩戴黑莓Z10智能手机,并连续进行16项日常生活活动。Z10加速度计和陀螺仪数据使用自定义HAR分类器进行处理,该分类器使用先前状态感知和过渡识别对静止状态进行分类。固定状态分类结果比较了(WT)和(WOT)转移识别和先前状态感知。WT分类器的坐下敏感性和f评分显著高于WOT (p<;0.05)。老年人WT的特异性和f值显著高于WOT。年轻人群的WT敏感性大于WOT,但不显著。年轻人的所有结果都有所改善。这些结果表明,检测静止状态前的过渡时间可以提高静止状态的识别。在连续的日常活动数据集上进行坐姿-站立分类与当前文献相当,并且在不使用计算密集型特征空间或分类器的情况下实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving classification of sit, stand, and lie in a smartphone human activity recognition system
Human Activity Recognition (HAR) allows healthcare specialists to obtain clinically useful information about a person's mobility. When characterizing immobile states with a smartphone, HAR typically relies on phone orientation to differentiate between sit, stand, and lie. While phone orientation is effective for identifying when a person is lying down, sitting and standing can be misclassified since pelvis orientation can be similar. Therefore, training a classifier from this data is difficult. In this paper, a hierarchical classifier that includes the transition phases into and out of a sitting state is proposed to improve sit-stand classification. For evaluation, young (age 26 ± 8.9 yrs) and senior (age 73 ± 5.9yrs) participants wore a Blackberry Z10 smartphone on their right front waist and performed a continuous series of 16 activities of daily living. Z10 accelerometer and gyroscope data were processed with a custom HAR classifier that used previous state awareness and transition identification to classify immobile states. Immobile state classification results were compared with (WT) and without (WOT) transition identification and previous state awareness. The WT classifier had significantly greater sit sensitivity and F-score (p<;0.05) than WOT. Stand specificity and F-score for WT were significantly greater than WOT for seniors. WT sit sensitivity was greater than WOT for the young population, though not significantly. All outcomes improved for the young population. These results indicated that examining the transition period before an immobile state can improve immobile state recognition. Sit-stand classification on a continuous daily activity data set was comparable to the current literature and was achieved without the use of computationally intensive feature spaces or classifiers.
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