蒙特卡罗模式搜索的身体活动识别

Alejandro Baldominos Gómez, P. I. Viñuela, Y. Sáez, B. Manderick
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引用次数: 4

摘要

医学文献已经认识到体育活动是健康生活的关键因素,因为它有显著的好处。然而,体育活动种类繁多,并不是所有的活动对健康都有相同的影响,也不是所有的活动都需要同样的努力。因此,由于能够跟踪用户运动的商品设备无处不在,人们对执行活动识别的兴趣越来越大,以便检测受试者进行的活动类型,并能够将其归功于他们的努力,这已被检测为促进身体活动的关键要求。本文提出了一种新的活动识别方法,使用蒙特卡罗模式搜索(MCSS)进行特征选择,使用随机森林进行分类。为了验证这种方法,我们对PAMAP2进行了评估,PAMAP2是UCI机器学习存储库中提供的一个关于体育活动的公共数据集,可以进行复制和评估。实验采用留一主体交叉验证,利用约三分之一的特征集实现了93%以上的分类准确率。结果是有希望的,因为它们优于在相同数据集上获得的其他工作,并且显著减少了所使用的特征集,这可以转化为执行活动识别所需的传感器数量的减少,从而降低成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monte Carlo Schemata Searching for Physical Activity Recognition
Medical literature have recognized physical activity as a key factor for a healthy life due to its remarkable benefits. However, there is a great variety of physical activities and not all of them have the same effects on health nor require the same effort. As a result, and due to the ubiquity of commodity devices able to track users' motion, there is an increasing interest on performing activity recognition in order to detect the type of activity carried out by the subjects and being able to credit them for their effort, which has been detected as a key requirement to promote physical activity. This paper proposes a novel approach for performing activity recognition using Monte Carlo Schemata Search (MCSS) for feature selection and random forests for classification. To validate this approach we have carried out an evaluation over PAMAP2, a public dataset on physical activity available in UCI Machine Learning repository, enabling replication and assessment. The experiments are conducted using leave-one-subject-out cross validation and attain classification accuracies of over 93% by using roughly one third of the total set of features. Results are promising, as they outperform those obtained in other works on the same dataset and significantly reduce the set of features used, which could translate in a decrease of the number of sensors required to perform activity recognition and, as a result, a reduction of costs.
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