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Construction of Maritime Image Deblurring Dataset Based on Blur Components Extraction Model

블러 성분 추출 모델 기반 해상용 이미지 디블러링 데이터셋 구축

  • Jaeho Kim (Department of Electronic Engineering, Yeungnam University) ;
  • Jaeuk Kim (Intelligent Software Team, Hanwha Systems Co., Ltd.) ;
  • Heejo Woo (Intelligent Software Team, Hanwha Systems Co., Ltd.) ;
  • Sungho Kim (Department of Electronic Engineering, Yeungnam University)
  • 김재호 (영남대학교 전자공학과) ;
  • 김재욱 (한화시스템(주) SW팀(지능형)) ;
  • 우희조 (한화시스템(주) SW팀(지능형)) ;
  • 김성호 (영남대학교 전자공학과)
  • Received : 2025.07.02
  • Accepted : 2025.09.25
  • Published : 2025.12.05

Abstract

This paper introduces a Blur Components Extraction Model(BCEM) and presents a synthetic image deblurring dataset specialized for maritime environments, Maritime Blur Dataset(MBD). The proposed BCEM extracts blur kernels from unaligned pairs of sharp and blurred images captured with a single camera, without requiring additional hardware or motion sensors. Using the extracted blur kernels, MBD is constructed by convolving them with high-resolution sharp images of maritime scenes that include ships, buoys, and ocean waves-elements rarely considered in terrestrial benchmark datasets. The proposed MBD is used to train deep learning-based image deblurring models, and their performance is evaluated through both qualitative and quantitative comparisons. By efficiently isolating motion blur components such as engine-induced vibrations, the proposed approach allows for the construction of high-quality and realistic deblurring datasets.

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Acknowledgement

이 논문은 2023년도 정부(방위사업청)의 재원으로 국방기술진흥연구소(KRIT)의 지원을 받아 수행된 연구임(협약번호 KRIT-CT-23-045, 지능형 전자광학 탑재체 체계종합 기술).