Guerra Bruna Maria Vittoria, Torti Emanuele, Marenzi Elisa, Schmid Micaela, Ramat Stefano, Leporati Francesco, Danese Giovanni
Bioengineering Laboratory, Department of Electrical, Computer and Biomedical Engineering, University of Pavia, Pavia, Italy.
Custom Computing and Programmable Systems Laboratory, Department of Electrical, Computer and Biomedical Engineering, University of Pavia, Pavia, Italy.
Front Neurosci. 2023 Oct 2;17:1256682. doi: 10.3389/fnins.2023.1256682. eCollection 2023.
Ambient Assisted Living is a concept that focuses on using technology to support and enhance the quality of life and well-being of frail or elderly individuals in both indoor and outdoor environments. It aims at empowering individuals to maintain their independence and autonomy while ensuring their safety and providing assistance when needed. Human Activity Recognition is widely regarded as the most popular methodology within the field of Ambient Assisted Living. Human Activity Recognition involves automatically detecting and classifying the activities performed by individuals using sensor-based systems. Researchers have employed various methodologies, utilizing wearable and/or non-wearable sensors, and employing algorithms ranging from simple threshold-based techniques to more advanced deep learning approaches. In this review, literature from the past decade is critically examined, specifically exploring the technological aspects of Human Activity Recognition in Ambient Assisted Living. An exhaustive analysis of the methodologies adopted, highlighting their strengths and weaknesses is provided. Finally, challenges encountered in the field of Human Activity Recognition for Ambient Assisted Living are thoroughly discussed. These challenges encompass issues related to data collection, model training, real-time performance, generalizability, and user acceptance. Miniaturization, unobtrusiveness, energy harvesting and communication efficiency will be the crucial factors for new wearable solutions.
环境辅助生活是一个专注于利用技术在室内和室外环境中支持和提高体弱或老年人生活质量与幸福感的概念。其目的是使个人能够保持独立和自主,同时确保他们的安全,并在需要时提供帮助。人类活动识别被广泛认为是环境辅助生活领域中最流行的方法。人类活动识别涉及使用基于传感器的系统自动检测和分类个人执行的活动。研究人员采用了各种方法,利用可穿戴和/或非可穿戴传感器,并运用从简单的基于阈值的技术到更先进的深度学习方法等算法。在本综述中,对过去十年的文献进行了批判性审查,特别探讨了环境辅助生活中人类活动识别的技术方面。对所采用的方法进行了详尽分析,突出了它们的优缺点。最后,深入讨论了环境辅助生活中人类活动识别领域遇到的挑战。这些挑战包括与数据收集、模型训练、实时性能、通用性和用户接受度相关的问题。小型化、不引人注意、能量收集和通信效率将是新的可穿戴解决方案的关键因素。