과제정보
이 논문은 한국수산자원공단의 '딥러닝 기반 수산자원 증대사업 효과조사 기법 개발(2023)' 사업의 지원을 받아 수행되었으며, 한국지능정보사회진흥원(NIA) AIHub의 '어류 개체 촬영 영상' 자료를 활용하였습니다.
참고문헌
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