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NTIS 바로가기방송공학회논문지 = Journal of broadcast engineering, v.27 no.1, 2022년, pp.44 - 55
장민호 (충북대학교 바이오시스템공학과) , 황영배 (충북대학교 지능로봇공학과)
In order to automatically provide information on fruits in agricultural related broadcasting contents, instance image segmentation of target fruits is required. In addition, the information on the 3D pose of the corresponding fruit may be meaningfully used. This paper represents research that provid...
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