Discriminative time-domain features for activity recognition on a mobile phone

Ebubekir Buber, M. A. Güvensan
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引用次数: 18

Abstract

People perform several activities during the daily life. It is important to reveal and analyze the daily life characteristic of a person, since it might help to cure several health problems. Especially to overcome obesity, heart attacks etc., people frequently do exercise. However, it is not easy to calculate the consumed energy during these exercises. Extra devices were/are required accomplishing this task. On the other hand, the powerful mobile phones encourage researchers to implement activity recognition task on these smartphones. Thus, activity recognition via mobile phone applications became so popular that several publications are made within the last five years. In this study, we elaborate on the discriminative time-domain features in order to recognize the daily activities with reduced number of features. 70 features, combined from existing studies have been analyzed and 15 of them are selected for the implementation of activity recognition on mobile phone. 6 different classification algorithms and 2 feature selection algorithms have been tested comparatively. The test results show that 8 daily activities including walking, sitting, standing, ascending/descending stairs, jogging, cycling and jumping could be classified with 94% ratio of success rate. Since k-NN is one of the most successful classifier, we have implemented it on our mobile application.
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判别时域特征在移动电话上的活动识别
人们在日常生活中进行几种活动。揭示和分析一个人的日常生活特征是很重要的,因为它可能有助于治疗一些健康问题。特别是为了克服肥胖、心脏病等,人们经常做运动。然而,计算这些运动中消耗的能量并不容易。完成这项任务需要额外的设备。另一方面,功能强大的手机鼓励研究人员在这些智能手机上实施活动识别任务。因此,通过手机应用程序进行活动识别变得如此流行,以至于在过去五年内出版了几本出版物。在本研究中,我们详细阐述了判别时域特征,以减少特征数量来识别日常活动。结合已有的研究,对70个特征进行了分析,并从中选择了15个特征用于实现手机上的活动识别。对比测试了6种不同的分类算法和2种特征选择算法。测试结果表明,步行、坐着、站立、上下楼梯、慢跑、骑自行车、跳跃等8项日常活动均可归类,成功率达94%。由于k-NN是最成功的分类器之一,我们已经在我们的移动应用程序上实现了它。
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