Yolov5m Blood Cell
Blood cell object detection model based on YOLOv5m architecture, excelling on blood cell datasets.
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Release Time : 1/1/2023
Model Overview
This model is specifically designed for blood cell object detection tasks, capable of accurately identifying and locating blood cells in images.
Model Features
High-Precision Detection
Achieves 90.5% mAP@0.5 accuracy on blood cell datasets.
Based on YOLOv5 Architecture
Utilizes the popular YOLOv5m architecture, balancing speed and accuracy.
Easy to Use
Provides a simple Python interface for quick integration into existing systems.
Model Capabilities
Blood Cell Detection
Object Localization
Image Analysis
Use Cases
Medical Imaging Analysis
Blood Cell Counting
Automatically detects and counts various cells in blood samples
Aids in medical diagnosis
Pathological Analysis
Identifies abnormal blood cell morphology
Assists in disease diagnosis
Medical Research
Blood Sample Analysis
Automates processing of large volumes of blood sample images
Enhances research efficiency
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