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Daily activity recognition with inertial ring and bracelet: An unsupervised approach

机译:惯性戒指和手镯的日常活动识别:一种无监督的方法

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Daily activity recognition can help people to maintain a healthy lifestyle and robot to better interact with users. Robots could therefore use the information coming from the activities performed by users to give them some custom hints to improve lifestyle and daily routine. The pervasiveness of smart things together with advances in cloud robotics can help the robot to perceive and collect more information about the users and the environment. In particular thanks to the miniaturization and low cost of Inertial Measurement Units, in the last years, body-worn activity recognition has gained popularity. In this work, we investigated the performances with an unsupervised approach to recognize eight different gestures performed in daily living wearing a system composed of two inertial sensors placed on the hand and on the wrist. In this context our aim is to evaluate whether the system is able to recognize the gestures in more realistic applications, where is not possible to have a training set. The classification problem was analyzed using two unsupervised approaches (K-Mean and Gaussian Mixture Model), with an intra-subject and an inter-subject analysis, and two supervised approaches (Support Vector Machine and Random Forest), with a 10-fold cross validation analysis and with a Leave-One-Subject-Out analysis to compare the results. The outcomes show that even in an unsupervised context the system is able to recognize the gestures with an averaged accuracy of 0.917 in the K-Mean inter-subject approach and 0.796 in the Gaussian Mixture Model inter-subject one.
机译:日常活动识别可以帮助人们维持健康的生活方式,并帮助机器人更好地与用户互动。因此,机器人可以使用来自用户执行的活动的信息为他们提供一些自定义提示,以改善生活方式和日常工作。智能事物的普及以及云机器人技术的进步可以帮助机器人感知并收集有关用户和环境的更多信息。特别是由于惯性测量装置的小型化和低成本,在过去的几年中,人体活动识别已广受欢迎。在这项工作中,我们使用无监督方法研究了表演,以识别穿着由两个放在手和腕上的惯性传感器组成的系统在日常生活中执行的八个不同手势。在这种情况下,我们的目标是评估系统是否能够在更不可能进行训练的现实应用中识别手势。使用两个无监督方法(K均值和高斯混合模型)(带有对象内和对象间分析)和两个监督方法(支持向量机和随机森林)(具有10倍交叉)对分类问题进行了分析验证分析,并带有“一人一题”分析以比较结果。结果表明,即使在无人监督的情况下,该系统也能够以K-Mean主体间方法的平均精度为0.917,而在高斯混合模型主体间的方法中的平均精度为0.996,能够识别手势。

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