과제정보
본 연구는 미래창조과학부 및 정보통신기술진흥센터의 정보통신·방송 연구개발 사업의 일환으로 수행하였음[2017-0-00162, 고령 사회에 대응하기 위한 실환경 휴먼케어 로봇 기술 개발].
참고문헌
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