I. Introduction
Autonomous systems based on the Internet of Things (IoT) are experiencing rapid growth, entering an era characterized by affordability, robustness, and reliability. This progress is facilitated by faster communication and extensive data development [1]. However, the escalating cost of computing energy burdens existing infrastructure [2]. Rather than solely focusing on enhancing infrastructure capabilities, an EdgeFog-Cloud hierarchical structure is gradually adopted within autonomous systems [3]. This architecture enables data processing across different layers, maximizing device utilization and enhancing real-time capabilities [4]. Consequently, an abundance of Edge-Fog-Cloud structures has been used on HAR. For instance, a Docker-based Edge-Fog-Cloud system was developed specifically for fall detection, demonstrating comparable accuracy and real-time performance to state-of-the-art approaches. Furthermore, its cloud center allows for long-term optimization [5]. Similarly, a deep learning model utilizing time-series data for HRI addresses the challenges posed by movement variations among individuals. By leveraging the Edge-Fog-Cloud infrastructure, this model effectively resolves such issues [6]. Both of these hierarchical systems showcase notable capabilities in the field of HAR.