Efficient Skeleton-Based Action Recognition for Real-Time Embedded Systems

  • Noor, Nadhira
  • Jametoni, Fabianaugie
  • Kim, Jinbeom
  • Hong, Hyunsu
  • Park, In Kyu
Citations

WEB OF SCIENCE

4
Citations

SCOPUS

5

초록

Action recognition is vital for various real-world applications, yet its implementation on embedded systems or edge devices faces challenges due to limited computing and memory resources. Our goal is to facilitate lightweight action recognition on embedded systems by utilizing skeleton-based techniques, which naturally require less computing and memory resources. To achieve this, we propose innovative methodologies and optimizations tailored for embedded deployment, including post-training quantization, optimized model architectures, and efficient resource utilization. By enabling real-time and lightweight action recognition on resource-constrained embedded systems, our research opens up new possibilities for applications in areas like autonomous surveillance, driving, and indoor safety monitoring.

키워드

Action recognitionconvolutional neural networkembedded systemskeleton-based
제목
Efficient Skeleton-Based Action Recognition for Real-Time Embedded Systems
저자
Noor, NadhiraJametoni, FabianaugieKim, JinbeomHong, HyunsuPark, In Kyu
DOI
10.1109/CVPRW63382.2024.00596
발행일
2024
유형
Proceedings Paper
저널명
IEEE Computer Society Conference on Computer Vision and Pattern Recognition Workshops
페이지
5889 ~ 5897