
[ Article ]
Journal of the KNST - Vol. 7, No. 1, pp.78-84
ISSN: 2635-4926
(Print)
Print publication date 31 Mar 2024
Received 24 Feb 2024
Revised 10 Mar 2024
Accepted 26 Mar 2024
엣지 컴퓨팅 환경을 위한 토널 주파수 탐지 기법
정대진*
Tonal Frequency Detection Method for an Edge-computing Environment
Dae-Jin Jung*
Correspondence to: *Dae-Jin Jung Department of Artificial Intelligence, Republic of Korea Naval Academy, Republic of Korea 1 Jungwon-ro, Jinhae-gu, Changwon-si, Gyungsangnam-do, 51704, Republic of Korea Tel: +82-55-907-5244 E-mail: djjung@navy.ac.kr
Ⓒ 2024 Korea Society for Naval Science & Technology
초록
해군 무인운용 체계에서 활용 가능한 저전력 고성능의 소나탐지 기술을 위하여, 본 연구에서는 엣지 컴퓨팅 환경에서 동작 가능한 딥러닝 기반의 로파그램 토널 탐지 기술을 제안한다. 일반적인 딥러닝 운용환경인 GPU를 활용하지 않는 엣지 컴퓨팅 환경에서도 효율적으로 토널 신호 탐지를 위한 설계 기법을 제시하고 상용의 엣지 컴퓨팅 환경에서 제안 기술의 효율성과 우수성을 확인하였다.
Abstract
In this study, a deep learning-based tonal frequency detection technology is proposed to operate in an edge computing environment, enabling low-power, high-performance sonar detection capabilities for naval unmanned systems. Design techniques for efficient tunnel signal detection are presented, even in edge computing environments without the typical deep learning hardware support, such as GPUs. Additionally, the effectiveness and superiority of the proposed technology are validated in commercial edge computing environments.
Keywords:
Tonal Frequency, Passive SONAR, Edge-computing Environment, Deep Learning키워드:
토널 주파수, 수동 소나, 엣지 컴퓨팅 환경, 딥 러닝References
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