Unobtrusive and smart recognition of human activities using smartphones inertial sensors is an interesting topic in the field of artificial intelligence acquired tremendous popularity among researchers, especially in recent years. A considerable challenge that needs more attention is the real-time detection of physical activities, since for many real-world applications such as health monitoring and elderly care, it is required to recognize users' activities immediately to prevent severe damages to individuals' wellness. In this paper, we propose a human activity recognition (HAR) approach for the online prediction of physical movements, benefiting from the capabilities of incremental learning algorithms. We develop a HAR system containing monitoring software and a mobile application that collects accelerometer and gyroscope data and send them to a remote server via the Internet for classification and recognition operations. Six incremental learning algorithms are employed and evaluated in this work and compared with several batch learning algorithms commonly used for developing offline HAR systems. The Final results indicated that considering all performance evaluation metrics, Incremental K-Nearest Neighbors and Incremental Naive Bayesian outperformed other algorithms, exceeding a recognition accuracy of 95% in real-time.
翻译:对使用智能手机惯性传感器的人类活动进行不受干扰和明智的认知,是研究人员在人工智能领域获得极大支持的一个令人感兴趣的话题,特别是在最近几年,一个需要更多注意的重大挑战是实时探测体育活动,因为对于许多真实世界的应用,如健康监测和老年人护理,需要立即确认用户的活动,以防止对个人健康造成严重损害。在本文件中,我们建议从渐进学习算法的能力中受益,对物理运动进行在线预测时采用人类活动识别(HAR)方法。我们开发了一个HAR系统,其中载有监测软件和移动应用,收集加速计和陀螺仪数据,并通过因特网将其发送到远程服务器进行分类和识别操作。在这项工作中使用了六种渐进学习算法,并与通常用于开发离线HAR系统的若干批次学习算法进行了比较。最后结果显示,考虑所有业绩评价衡量标准、递增 K-Nearest Neighbors 和递增Naive Bayesian 异常的其他算法,超过了实时95%的识别精确度。