English

Event Camera Meets Mobile Embodied Perception: Abstraction, Algorithm, Acceleration, Application

Robotics 2025-12-18 v4 Computer Vision and Pattern Recognition

Abstract

With the increasing complexity of mobile device applications, these devices are evolving toward high agility. This shift imposes new demands on mobile sensing, particularly in achieving high-accuracy and low-latency. Event-based vision has emerged as a disruptive paradigm, offering high temporal resolution and low latency, making it well-suited for high-accuracy and low-latency sensing tasks on high-agility platforms. However, the presence of substantial noisy events, lack of stable, persistent semantic information, and large data volume pose challenges for event-based data processing on resource-constrained mobile devices. This paper surveys the literature from 2014 to 2025 and presents a comprehensive overview of event-based mobile sensing, encompassing its fundamental principles, event \textit{abstraction} methods, \textit{algorithm} advancements, and both hardware and software \textit{acceleration} strategies. We discuss key \textit{applications} of event cameras in mobile sensing, including visual odometry, object tracking, optical flow, and 3D reconstruction, while highlighting challenges associated with event data processing, sensor fusion, and real-time deployment. Furthermore, we outline future research directions, such as improving the event camera with advanced optics, leveraging neuromorphic computing for efficient processing, and integrating bio-inspired algorithms. To support ongoing research, we provide an open-source \textit{Online Sheet} with recent developments. We hope this survey serves as a reference, facilitating the adoption of event-based vision across diverse applications.

Keywords

Cite

@article{arxiv.2503.22943,
  title  = {Event Camera Meets Mobile Embodied Perception: Abstraction, Algorithm, Acceleration, Application},
  author = {Haoyang Wang and Ruishan Guo and Pengtao Ma and Ciyu Ruan and Xinyu Luo and Wenhua Ding and Tianyang Zhong and Jingao Xu and Yunhao Liu and Xinlei Chen},
  journal= {arXiv preprint arXiv:2503.22943},
  year   = {2025}
}

Comments

Accepted by ACM CSUR,35 pages

R2 v1 2026-06-28T22:38:46.740Z