Acknowledgement
본 연구는 전남대학교 국립대학교 육성사업비 교내 신진 학술연구비 (과제번호: 2020-2020)와 한국산업기술평가관리원 연구비 (과제번호: 2020-3414)의 지원에 의하여 진행되었다. 또한 전남대학교 4단계 BK21사업 인공지능 융합 인재 양성 사업단의 지속적인 관심과 지원에 깊은 감사를 표현한다.
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