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Feature Selection for Wearable Smartphone-Based Human Activity Recognition with Able bodied Elderly and Stroke Patients

机译:身体健全老年人和中风患者的可穿戴式基于智能手机的人类活动识别功能选择

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摘要

Human activity recognition (HAR), using wearable sensors, is a growing area with the potential to provide valuable information on patient mobility to rehabilitation specialists. Smartphones with accelerometer and gyroscope sensors are a convenient, minimally invasive, and low cost approach for mobility monitoring. HAR systems typically pre-process raw signals, segment the signals, and then extract features to be used in a classifier. Feature selection is a crucial step in the process to reduce potentially large data dimensionality and provide viable parameters to enable activity classification. Most HAR systems are customized to an individual research group, including a unique data set, classes, algorithms, and signal features. These data sets are obtained predominantly from able-bodied participants. In this paper, smartphone accelerometer and gyroscope sensor data were collected from populations that can benefit from human activity recognition: able-bodied, elderly, and stroke patients. Data from a consecutive sequence of 41 mobility tasks (18 different tasks) were collected for a total of 44 participants. Seventy-six signal features were calculated and subsets of these features were selected using three filter-based, classifier-independent, feature selection methods (Relief-F, Correlation-based Feature Selection, Fast Correlation Based Filter). The feature subsets were then evaluated using three generic classifiers (Naïve Bayes, Support Vector Machine, j48 Decision Tree). Common features were identified for all three populations, although the stroke population subset had some differences from both able-bodied and elderly sets. Evaluation with the three classifiers showed that the feature subsets produced similar or better accuracies than classification with the entire feature set. Therefore, since these feature subsets are classifier-independent, they should be useful for developing and improving HAR systems across and within populations.
机译:使用可穿戴式传感器的人类活动识别(HAR)是一个不断发展的领域,有潜力向康复专家提供有关患者活动的有价值的信息。具有加速度计和陀螺仪传感器的智能手机是一种便捷,微创且低成本的移动性监控方法。 HAR系统通常会预处理原始信号,对信号进行分段,然后提取要在分类器中使用的特征。特征选择是该过程中至关重要的步骤,可减少潜在的大数据维数并提供可行的参数以实现活动分类。大多数HAR系统是为单个研究小组定制的,包括唯一的数据集,类,算法和信号特征。这些数据集主要来自健全的参与者。在本文中,智能手机加速度计和陀螺仪传感器数据是从可从人类活动识别中受益的人群中收集的:身体健全,老年人和中风患者。收集了来自41个移动任务(18个不同任务)的连续序列的数据,共计44位参与者。使用三种基于滤波器的,独立于分类器的特征选择方法(Relief-F,基于相关性的特征选择,基于快速相关性的滤波器),计算了76个信号特征,并选择了这些特征的子集。然后使用三个通用分类器(朴素贝叶斯,支持向量机,j48决策树)评估特征子集。尽管中风人群的子集与健全人群和老年人组都有一定差异,但对这三个人群均具有相同的特征。使用三个分类器进行的评估显示,与使用整个特征集进行分类相比,特征子集产生的相似性或更好的准确性。因此,由于这些特征子集与分类器无关,因此它们对于在人群中和人群中开发和改善HAR系统很有用。

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