Please use this identifier to cite or link to this item: https://elib.vku.udn.vn/handle/123456789/5009
Title: A study on semi-supervised solutions for overlapped cell classification
Other Titles: Nghiên cứu giải pháp cho phân lớp tế bào bị phủ lấp dựa trên học bán giám sát
Authors: Le, Thi Thu Nga
Nguyen, Duc Hao
Nguyen, Thi Ngoc Lien
Keywords: De-overlapping cells
overlapping cell segmentation
cervical cell N/C ratio
Issue Date: 5-Jun-2025
Publisher: Vietnam-Korea University of Information and Communication Technology
Series/Report no.: NCKHSV;
Abstract: This paper proposes a semi-supervised learning-based approach to segment and classify overlapping cervical cells. The segmentation model is based on DoNet, which effectively separates intersecting cell regions using a decompose-and-recombine strategy. For classification, we apply a Semi-FixMatch model that leverages unlabeled data with pseudo-labeling and consistency regularization. Experiments on the ISBI2014 dataset show that our method achieves competitive performance even with limited labeled data, accurately identifying abnormal cells based on the nucleus-to-cytoplasm (N/C) ratio. The proposed solution enhances the reliability of automated cytology analysis and reduces the burden of manual labeling.
Description: Kỷ yếu Nghiên cứu khoa học của sinh viên Trường Đại học Công nghệ Thông tin và Truyền thông Việt - Hàn năm học 2024-2025; trang 41-45.
URI: https://elib.vku.udn.vn/handle/123456789/5009
Appears in Collections:SV NCKH năm học 2024-2025

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