YOLOv8을 이용한 실시간 함정 추진기 VCIS 탐지 모델 개발 연구Development of a real-time VCIS detection model using YOLOv8
- Other Titles
- Development of a real-time VCIS detection model using YOLOv8
- Authors
- 김동욱; 설한신
- Issue Date
- 12월-2024
- Publisher
- 국방기술품질원
- Keywords
- CV(Computer Vision); CIS; deep learning; cavitaion; propeller
- Citation
- 국방품질연구논집(JDQS), v.6, no.2, pp 111 - 119
- Pages
- 9
- Journal Title
- 국방품질연구논집(JDQS)
- Volume
- 6
- Number
- 2
- Start Page
- 111
- End Page
- 119
- URI
- https://www.kriso.re.kr/sciwatch/handle/2021.sw.kriso/10528
- DOI
- 10.23199/jdqs.2024.6.2.011
- ISSN
- 2671-4744
- Abstract
- This elementary study was conducted to develop a quantitative real-time vibration-captured infrared spectroscopy (VCIS) detection model. In this s tudy, the deep learning model YOLOv8 was used to t rain cavitations and propellers. Among several models with different neural network sizes, an appropriate model was selected based on accuracy and inference time. Subsequently, cavitation detection was performed using a model trained using model tests and full-ship measurement results. The trained model could accurately detect cavitations and propellers in learned cases and cavitations in unlearned cases. Additionally, it could detect cavitations in full-ship measurements. Furthermore, it could detect the cavitation inception speed. These results demonstrate the feasibility of creating a quantitative VCIS detection model using a deep learning-based computer vision model.
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