Semi-Supervised Facial Acne Segmentation Using Bidirectional Copy-Paste
Semin Kim,
Huisu Yoon,
Jongha Lee
Abstract:Facial acne is a prevalent dermatological condition regularly observed in the general population. This study introduces a novel deep learning model for facial acne segmentation utilizing a semi-supervised learning method known as bidirectional copy-paste, which synthesizes images by interchanging foreground and background parts between labeled and unlabeled images during the training phase. To overcome the lower performance observed in the labeled image training part compared to the previous methods, a new fra… Show more
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