The Biorobotics Institute, Scuola Superiore Sant'Anna, Pisa, Italy; Department of Excellence in Robotics and AI, Scuola Superiore Sant'Anna, Pisa, Italy.
Department of Electronics, Information and Biomedical Engineering, Politecnico di Milano, P.zza L. da Vinci 32, Milan 20133, Italy; Institute of Electronics, Computer and Telecommunication Engineering (IEIIT), National Research Council of Italy (CNR), Milan, Italy.
Comput Methods Programs Biomed. 2022 Jun;219:106753. doi: 10.1016/j.cmpb.2022.106753. Epub 2022 Mar 15.
Thanks to the increased interest towards health and lifestyle, a larger adoption in wearable devices for activity tracking is present among the general population. Wearable devices such as smart wristbands integrate inertial units, including accelerometers and gyroscopes, which can be utilised to perform automatic classification of hand gestures. This technology could also find an important application in automatic medication adherence monitoring. Accordingly, this study aims at comparing the performance of several Machine-Learning (ML) and Deep-Learning (DL) approaches for the automatic identification of hand gestures, with a specific focus on the drinking gesture, commonly associated to the action of oral intake of a pill-packed medication.
A method to automatically recognize hand gestures in daily living is proposed in this work. The method relies on a commercially available wristband sensor (MetaMotionR, MbientLab Inc.) integrating tri-axial accelerometer and gyroscope. Both ML and DL algorithms were evaluated for both multi-gesture (drinking, eating, pouring water, opening a bottle, typing, answering a phone, combing hair, and cutting) and binary gesture (drinking versus other gestures) classification from wristband sensor signals. Twenty-two participants were involved in the experimental analysis, performing a 10 min acquisition in a laboratory setting. Leave-one-subject-out cross validation was performed for robust performance assessment.
The highest performance was achieved using a convolutional neural network with long- short term memory (CNN-LSTM), with a median f1-score of 90.5 [first quartile: 84.5; third quartile: 92.5]% and 92.5 [81.5;98.0]% for multi-gesture and binary classification, respectively.
Experimental results showed that hand gesture classification with ML/DL from wrist accelerometers and gyroscopes signals can be performed with reasonable accuracy in laboratory settings, paving the way for a new generation of medical devices for monitoring medical adherence.
由于人们对健康和生活方式的兴趣日益增加,普通人群对手表式可穿戴设备的活动追踪功能的采用率也在提高。智能腕带等可穿戴设备集成了惯性单元,包括加速度计和陀螺仪,可用于对手部手势进行自动分类。这项技术也可以在自动药物依从性监测中找到重要的应用。因此,本研究旨在比较几种机器学习(ML)和深度学习(DL)方法在自动识别手部手势方面的性能,特别是针对与口服药物摄入相关的饮水手势。
本研究提出了一种在日常生活中自动识别手部手势的方法。该方法依赖于一款商用腕带传感器(MetaMotionR,MbientLab Inc.),该传感器集成了三轴加速度计和陀螺仪。对 ML 和 DL 算法进行了评估,以对手部传感器信号进行多手势(饮水、进食、倒水、开瓶、打字、接电话、梳头和剪发)和二分类(饮水与其他手势)识别。22 名参与者参与了实验室环境下的 10 分钟采集实验。采用留一受试者外验证法进行稳健性能评估。
使用卷积神经网络与长短时记忆(CNN-LSTM)获得了最高的性能,多分类的中位数 f1 得分为 90.5 [四分位距:84.5;四分位距:92.5]%,二分类的中位数 f1 得分为 92.5 [81.5;98.0]%。
实验结果表明,在实验室环境下,使用腕部加速度计和陀螺仪信号进行基于 ML/DL 的手部手势分类可以达到合理的精度,为新一代用于监测药物依从性的医疗设备铺平了道路。