AI TECH
룰루랩은 전 세계 200만개 이상의 피부 데이터를 보유하고 있습니다.
전문평가기관 공인 92% 이상의 정확도는 당신의 피부를 누구보다 견고하게 분석해냅니다.
룰루랩은 전 세계 200만개 이상의 피부 데이터를 보유하고 있습니다.
전문평가기관 공인 92% 이상의 정확도는 당신의 피부를 누구보다 견고하게 분석해냅니다.
2019.10.27
Shohrukh Bekmirzaev, Seoyoung Oh, and Sangwook Yoo
Semantic segmentation is a hot topic in computer vision where the most challenging tasks of object detection and recognition have been handling by the success of semantic segmentation approaches. We propose a concept of objectby-object learning technique
Bekmirzaev, Shohrukh, Seoyoung Oh, and Sangwook Yo. "RethNet: Object-by-Object Learning for Detecting Facial Skin Problems." Proceedings of the IEEE/CVF International Conference on Computer Vision Workshops. 2019.
Abstract
Semantic segmentation is a hot topic in computer vision where the most challenging tasks of object detection and recognition have been handling by the success of semantic segmentation approaches. We propose a concept of objectby-object learning technique to detect 11 types of facial skin lesions using semantic segmentation methods. Detecting individual skin lesion in a dense group is a challenging task, because of ambiguities in the appearance of the visual data. We observe that there exist co-occurrent visual relations between object classes (e.g., wrinkle and age spot, or papule and whitehead, etc.). In fact, rich contextual information significantly helps to handle the issue. Therefore, we propose REthinker blocks that are composed of the locally constructed convLSTM/Conv3D layers and SE module as a one-shot attention mechanism whose responsibility is to increase network's sensitivity in the local and global contextual representation that supports to capture ambiguously appeared objects and co-occurrence interactions between object classes. Experiments show that our proposed model reached MIoU of 79.46% on the test of a prepared dataset, representing a 15.34% improvement over Deeplab v3+ (MIoU of 64.12%).