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Investigating Inter-Subject and Inter-Activity Variations in Activity Recognition Using Wearable Motion Sensors

机译:使用可穿戴运动传感器研究活动识别中的受试者间和活动间变化

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This work investigates inter-subject and inter-activity variability of a given activity dataset and provides some new definitions to quantify such variability. The definitions are sufficiently general and can be applied to a broad class of datasets that involve time sequences or features acquired using wearable sensors. The study is motivated by contradictory statements in the literature on the need for user-specific training in activity recognition. We employ our publicly available dataset that contains 19 daily and sports activities acquired from eight participants who wear five motion sensor units each. We pre-process recorded activity time sequences in three different ways and employ absolute, Euclidean and dynamic time warping distance measures to quantify the similarity of the recorded signal patterns. We define and calculate the average inter-subject and inter-activity distances with various methods based on the raw and pre-processed time-domain data as well as on the raw and pre-processed feature vectors. These definitions allow us to identify the subject who performs the activities in the most representative way and pinpoint the activities that show more variation among the subjects. We observe that the type of pre-processing used affects the results of the comparisons but that the different distance measures do not alter the comparison results as much. We check the consistency of our analysis and results by highlighting some of our activity recognition rates based on an exhaustive set of sensor unit, sensor type and subject combinations. We expect the results to be useful for dynamic sensor unit/type selection, for deciding whether to perform user-specific training and for designing more effective classifiers in activity recognition.
机译:这项工作调查了给定活动数据集的受试者间和活动间变异性,并提供了一些新的定义来量化这种变异性。这些定义足够笼统,可以应用于涉及时间序列或使用可穿戴式传感器获取的特征的广泛数据集。这项研究的动机是文献中有关活动识别中针对特定用户的培训需求的矛盾陈述。我们使用我们的公开数据集,其中包含19项日常活动和体育活动,这些活动是从八名参与者中获得的,每名参与者均配备五个运动传感器单元。我们以三种不同的方式预处理记录的活动时间序列,并采用绝对,欧几里得和动态时间规整距离量度来量化记录信号模式的相似性。我们基于原始和预处理的时域数据以及原始和预处理的特征向量,使用各种方法定义和计算平均对象间和活动间的距离。这些定义使我们能够确定以最具代表性的方式执行活动的主体,并查明在各个主体之间表现出更多差异的活动。我们观察到所使用的预处理类型会影响比较结果,但是不同的距离度量值不会对比较结果产生太大的影响。我们通过基于详尽的传感器单元,传感器类型和主题组合来突出显示我们的一些活动识别率,从而检查分析和结果的一致性。我们希望结果对动态传感器单元/类型选择,决定是否执行用户特定的培训以及设计活动识别中更有效的分类器有用。

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