计算机科学
互操作性
人工智能
数据科学
领域(数学)
活动识别
领域
传感器融合
机器学习
人机交互
万维网
政治学
数学
法学
纯数学
作者
Qi Wen,Xiangmin Xu,Kun Qian,Björn W. Schuller,Giancarlo Fortino,Andréa Aliverti
标识
DOI:10.1109/jbhi.2024.3406737
摘要
This scoping review paper redefines the Artificial Intelligence-based Internet of Things (AIoT) driven Human Activity Recognition (HAR) field by systematically extrapolating from various application domains to deduce potential techniques and algorithms. We distill a general model with adaptive learning and optimization mechanisms by conducting a detailed analysis of human activity types and utilizing contact or non-contact devices. It presents various system integration mathematical paradigms driven by multimodal data fusion, covering predictions of complex behaviors and redefining valuable methods, devices, and systems for HAR. Additionally, this paper establishes benchmarks for behavior recognition across different application requirements, from simple localized actions to group activities. It summarizes open research directions, including data diversity and volume, computational limitations, interoperability, real-time recognition, data security, and privacy concerns. Finally, we aim to serve as a comprehensive and foundational resource for researchers delving into the complex and burgeoning realm of AIoT-enhanced HAR, providing insights and guidance for future innovations and developments.
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