
화질복원 딥러닝 모델을 이용한 전투체계 스냅샷 이미지 전송 효율 향상에 관한 연구
Ⓒ 2026 Korea Society for Naval Science & Technology
초록
함정 전투체계는 수상센서 영상과 스냅샷을 통해 표적 탐지 및 식별을 수행한다. 그러나 일부 장비는 고화질 이미지를 전송해 지연과 저장 비효율 문제가 발생한다. 이를 해결하기 위해 본 논문은 저화질 이미지를 송신하고 딥러닝 기반 Real-ESRGAN 모델을 적용해 복원하는 방안을 제안한다. 복원된 이미지 품질은 PSNR과 SSIM 지표로 검증되었으며, 그 결과 전송 지연과 저장 효율이 개선되고 전투체계 운용성과 AI 적용 가능성이 확인되었다.
Abstract
Naval combat systems utilize surface sensor imagery and snapshots as core elements for target detection and identification. However, some equipment transmit high-resolution images, causing delays and inefficiencies in storage management. To address this, this study proposes transmitting low-resolution images and applying the deep learning–based Real-ESRGAN (Real Enhanced Super-Resolution Generative Adversarial Network) model for restoration. The quality of the restored images was evaluated using PSNR (Peak Signal-to-Noise Ratio) and SSIM (Structural Similarity Index Measure) metrics, demonstrating reduced transmission delay, improved storage efficiency, enhanced system operability, and the feasibility of AI integration within naval combat systems.
Keywords:
Naval Combat System, Snapshot, Low-Resolution, AI, Real-ESRGAN키워드:
함정 전투체계, 스냅샷, 저화질, 인공지능Acknowledgments
This work was supported by the Government of the Republic of Korea in 2024 (912957501).
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