Semi-supervised Semantic Segmentation using Redesigned Self-Training for White Blood Cell

Luu, Vinh Quoc, Le, Duy Khanh, Nguyen, Huy Thanh, Nguyen, Minh Thanh, Nguyen, Thinh Tien, Dinh, Vinh Quang

arXiv.org Artificial Intelligence 

Artificial Intelligence (AI) in healthcare, especially in white blood cell cancer diagnosis, is hindered by two primary challenges: the lack of large-scale labeled datasets for white blood cell (WBC) segmentation and outdated segmentation methods. To address the first challenge, a semi-supervised learning framework should be brought to efficiently annotate the large dataset. In this work, we address this issue by proposing a novel self-training pipeline with the incorporation of FixMatch. We discover that by incorporating FixMatch in the self-training pipeline, the performance improves in the majority of cases. Our performance achieved the best performance with the self-training scheme with consistency on DeepLab-V3 architecture and ResNet-50, reaching 90.69%, 87.37%, and 76.49% on Zheng 1, Zheng 2, and LISC datasets, respectively.