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Machine learning and statistical approaches to assessing gait patterns of younger and older healthy adults climbing stairs

机译:机器学习和统计方法来评估年轻和年长健康成年人爬楼梯的步态模式

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The following study explores the methods for activity recognition of younger and older adults climbing stairs. There is a correlation to health and the level of activity of an individual, which has captured interest in this field in computing science to determine the level of activity of an individual. The focus of the study is the classification of younger and older gait patterns climbing up and down a set of 13 stairs. From using acceleration data from an accelerometer placed on the lumbro-sacral joint; 14 gait features are extracted and analysed. The machine learning algorithms focused in this study are Multilayer Perceptron (MLP), KStar and Support Vector Machine (SVM). An evaluation of performance among three machine learning algorithms was carried out. MLP was found to provide the highest in accuracy for classification. Accuracy of 95.7% was found for classifying a subject walking either up or down the stairs and an accuracy of 80.6% for classifying whether the subject was younger or older. An evaluation of individual features showed poor performance of classification for young and older subjects climbing up and down stairs, and at most cases failed to distinguish between the two classes. However, subsets of features were created using a sequential feature selection algorithm based on feature ranking and individual feature performance. The performance of each subset was recorded and a subset of the top four features achieved an accuracy of 81.7% for classification between young and older subjects. In comparison, 13 features were required to obtain the best performance of 95.7% to distinguish between up and down classes.
机译:以下研究探讨了识别年轻人和老年人爬楼梯的活动的方法。与健康和个人活动水平相关,这已引起计算机科学领域对确定个人活动水平的兴趣。研究的重点是向上和向下爬13个台阶的步态模式的分类。通过使用来自放置在lum- joint关节上的加速度计的加速度数据;提取并分析了14个步态特征。本研究重点关注的机器学习算法是多层感知器(MLP),KStar和支持向量机(SVM)。对三种机器学习算法之间的性能进行了评估。发现MLP提供了最高的分类准确度。发现对上楼梯或下楼梯的对象进行分类的准确度为95.7%,对对象是年轻还是较大的分类的准确度为80.6%。对单个特征的评估显示,对于上下楼梯的年轻和老年受试者,分类性能较差,并且在大多数情况下,无法区分这两个类别。但是,特征子集是使用基于特征等级和单个特征性能的顺序特征选择算法创建的。记录每个子集的性能,并且最重要的四个特征的子集在年轻人和老年人之间进行分类的准确率达到了81.7%。相比之下,需要13个功能才能获得95.7%的最佳性能,以区分上层和下层类别。

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