Yolov8s Blood Cell Detection
A blood cell detection model based on YOLOv8s, capable of identifying platelets, red blood cells, and white blood cells.
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Release Time : 1/29/2023
Model Overview
This model is an object detection model based on the YOLOv8 architecture, specifically designed for blood cell detection. It can accurately identify and classify platelets, red blood cells, and white blood cells in blood samples.
Model Features
High-Precision Detection
Achieves 91.68% mAP@0.5 on the validation set, demonstrating excellent performance.
Multi-Class Recognition
Capable of detecting three types of blood cells simultaneously: platelets, red blood cells, and white blood cells.
Based on YOLOv8
Utilizes the latest YOLOv8 architecture, offering efficient detection speed and accuracy.
Model Capabilities
Blood Cell Detection
Object Detection
Image Analysis
Use Cases
Medical Diagnosis
Blood Sample Analysis
Used for automated analysis of cell types and counts in blood samples.
Can quickly and accurately identify platelets, red blood cells, and white blood cells.
Medical Research
Blood Disease Research
Assists researchers in analyzing changes and abnormalities in blood cells.
Provides standardized cell detection data.
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