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CNN-Based pipeline-related artifact and damage recognition in IHC staining as preprocessing step for pathological analysis

Taisija Kožarina

ABSTRACT

This work proposes automated solution for artifact and damage segmentation in biomedical images using machine learning algorithms. The development process includes data preprocessing, label classification using a clustering algorithm and segmentation model. CNN architectures like YOLO and U-NET are utilized for segmentation, and K-Means and DBSC algorithms are evaluated for clustering. The outcomes include a set of data preprocessing precodures, clustering algorithm testing and results analysis, segmentation model and recommendations for further development.
Author: Taisija Kožarina
Degree: Bachelor
Year: 2024
Work Language: English
Supervisor: Dr. sc. ing., Jeļena Kijonoka
Faculty: Engineering Faculty
Study programme: Computer Science

KEYWORDS

SEMANTIC SEGMENTATION, COMPUTER VISION, CONVOLUTIONA NEURAL NETWORK, CLUSTERING, DIGITAL PATHOLOGY