Machine learning approach of automatic identification and counting of blood cells (RBC, WBC, and Platelet) with KNN and IOU based verification.
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Updated
Dec 21, 2022 - Python
Machine learning approach of automatic identification and counting of blood cells (RBC, WBC, and Platelet) with KNN and IOU based verification.
The complete blood count (CBC) dataset contains a total of 360 blood smear images of red blood cells (RBCs), white blood cells (WBCs), and Platelets with annotations.
[ICIP'24 Lecture Presentation] Official implementation of "CST-YOLO: A Novel Method for Blood Cell Detection Based on Improved YOLOv7 and CNN-Swin Transformer".
This is a dataset of blood cells photos.
This is our repo for CS231 - Computer Vision, Spring 2021, University of Information Technology, VNU HCM
This is an individual project on Image Processing and Computer Vision course about blood cells object detection and classification.
Code for the paper titled "Advancing instance segmentation and WBC classification in peripheral blood smear through domain adaptation: A study on PBC and the novel RV-PBS datasets" published on Elsevier's Expert Systems With Applications (ESWA) journal.
Project for the Applied Machine Learning (EI70360) class at TUM Summer Semester 2023.
Blood Cell Detection with YOLOv10: This project utilizes YOLOv10, a cutting-edge object detection model, to accurately identify and count blood cells in images. Integrated with a Gradio web interface, the tool provides real-time image annotation and detailed cell count summaries, making it a powerful solution for automated blood cell analysis.
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