Acknowledgement
본 연구는 한국농어촌공사 농어촌연구원의 학술연구용역인' 딥러닝을 이용한 GPR 모니터링 자료 공동 반응 분석 및 방조제 현장적용 연구'사업의 지원으로 수행되었으며, 이에 감사드립니다.
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