Department of Computing, School of Electrical Engineering and Computer Science, National University of Sciences and Technology (NUST), Islamabad 44000, Pakistan.
Department for Epileptology, University Hospital Bonn, 53127 Bonn, Germany.
Sensors (Basel). 2024 Sep 24;24(19):6167. doi: 10.3390/s24196167.
The Internet of Health Things (IoHT) is a broader version of the Internet of Things. The main goal is to intervene autonomously from geographically diverse regions and provide low-cost preventative or active healthcare treatments. Smart wearable IMUs for human motion analysis have proven to provide valuable insights into a person's psychological state, activities of daily living, identification/re-identification through gait signatures, etc. The existing literature, however, focuses on specificity i.e., problem-specific deep models. This work presents a generic BiGRU-CNN deep model that can predict the emotional state of a person, classify the activities of daily living, and re-identify a person in a closed-loop scenario. For training and validation, we have employed publicly available and closed-access datasets. The data were collected with wearable inertial measurement units mounted non-invasively on the bodies of the subjects. Our findings demonstrate that the generic model achieves an impressive accuracy of 96.97% in classifying activities of daily living. Additionally, it re-identifies individuals in closed-loop scenarios with an accuracy of 93.71% and estimates emotional states with an accuracy of 78.20%. This study represents a significant effort towards developing a versatile deep-learning model for human motion analysis using wearable IMUs, demonstrating promising results across multiple applications.
健康物联网(IoHT)是物联网的一个更广泛的版本。其主要目标是自主干预来自不同地理位置的区域,并提供低成本的预防性或主动医疗保健治疗。用于人体运动分析的智能可穿戴 IMU 已被证明可以为一个人的心理状态、日常生活活动、通过步态特征进行识别/重新识别等提供有价值的见解。然而,现有文献侧重于特定问题,即特定于问题的深度模型。这项工作提出了一个通用的 BiGRU-CNN 深度模型,该模型可以预测一个人的情绪状态、对日常生活活动进行分类,并在闭环场景中重新识别一个人。为了训练和验证,我们使用了公开可用的和封闭访问的数据集。这些数据是使用穿戴式惯性测量单元无创地安装在受试者身上收集的。我们的研究结果表明,该通用模型在日常生活活动分类方面的准确率达到了令人印象深刻的 96.97%。此外,它在闭环场景中以 93.71%的准确率重新识别个人,并以 78.20%的准确率估计情绪状态。这项研究代表了使用可穿戴式 IMU 开发人体运动分析的多功能深度学习模型的重要努力,在多个应用中取得了有前途的结果。