학술논문

RGB 채널 영상을 이용한 YOLO 모델 기반의 MWIR 영상 탐지 성능평가
A Study on Performance Evaluation of MWIR Image Detection Based on YOLO Model Using RGB Channel Image
Document Type
Article
Source
제어.로봇.시스템학회 논문지, 29(10), pp.781-786 Oct, 2023
Subject
제어계측공학
Language
한국어
ISSN
2233-4335
1976-5622
Abstract
Recently, artificial intelligence is being used in many business fields. In the field of image, it is used in many different forms, starting with simple object detection, tracking, synthetic image generation, and style conversion. In particular, the object detection field has already been applied and used in many fields such as national defense, product defect detection, and security thanks to tremendous development. However, current object detection models are mainly performed with RGB images. Due to this direction of research, a separate study is underway for a model for IR image. Because of this, the development of deep learning models for IR images is much slower than RGB images. In addition, due to the lack of IR image data, research on IR image deep learning models is becoming more and more laggy compared to other deep learning studies. This paper proposes that the model trained on RGB images shows excellent performance in IR images. The object detection deep learning model learns shape information by using feature extraction. Our results show that IR images showing the shape of an object and images learned as RGB images can be sufficiently inferred. As a result, the model trained with RGB images shows robustness even in IR images.