This framework for human behavior monitoring aims to take a holistic approach to study, track, monitor, and analyze human behavior during activities of daily living (ADLs). The framework consists of two novel functionalities. First, it can perform the semantic analysis of user interactions on the diverse contextual parameters during ADLs to identify a list of distinct behavioral patterns associated with different complex activities. Second, it consists of an intelligent decision-making algorithm that can analyze these behavioral patterns and their relationships with the dynamic contextual and spatial features of the environment to detect any anomalies in user behavior that could constitute an emergency. These functionalities of this interdisciplinary framework were developed by integrating the latest advancements and technologies in human-computer interaction, machine learning, Internet of Things, pattern recognition, and ubiquitous computing. The framework was evaluated on a dataset of ADLs, and the performance accuracies of these two functionalities were found to be 76.71% and 83.87%, respectively. The presented and discussed results uphold the relevance and immense potential of this framework to contribute towards improving the quality of life and assisted living of the aging population in the future of Internet of Things (IoT)-based ubiquitous living environments, e.g., smart homes.
翻译:人类行为监测框架旨在采取综合办法,研究、跟踪、监测和分析日常生活活动(ADLs)期间人类行为。框架由两个新功能组成。首先,框架可以对ADLs期间不同背景参数的用户互动进行语义分析,以确定与不同复杂活动有关的不同行为模式清单;其次,框架由智能决策算法组成,可以分析这些行为模式及其与环境动态背景和空间特征的关系,以发现用户行为中可能构成紧急情况的任何异常现象。这一跨学科框架的这些功能是通过以下方法开发的:将人类计算机互动、机器学习、物联网、模式识别和无所不在的计算方面的最新进展和技术结合起来。框架在ADLs数据集上进行了评价,发现这两个功能的性能差异分别为76.71%和83.87%。介绍和讨论的结果维护了这一框架的相关性和巨大潜力,有助于改善用户行为中可能构成紧急情况的任何异常现象。这些功能是通过将人类计算机互动、机器学习、事物的互联网、图案识别和无处不在的计算方法计算中的最新进展和技术结合起来而形成的。框架在互联网上生活的人群的未来,基于智能环境的互联网上的生活环境。