Yolov5n Football
A football object detection model based on YOLOv5n, specifically designed to detect various targets on a football field.
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Release Time : 12/28/2022
Model Overview
This model is a lightweight object detection model based on the YOLOv5n architecture, optimized specifically for football scenes, capable of detecting players, the ball, and other related objects on the field.
Model Features
Lightweight Design
Based on the YOLOv5n architecture, the model has a small size, making it suitable for resource-constrained environments.
Football Scene Optimization
Specifically trained for football scenes, it can accurately detect players, the ball, and other targets.
Efficient Inference
Supports real-time inference at 640x640 resolution.
Model Capabilities
Football scene object detection
Real-time image analysis
Multi-object recognition
Use Cases
Sports Analysis
Football Match Analysis
Used to analyze player positions and ball locations during football matches.
Provides real-time position data for players and the ball.
Video Production
Automatic Annotation
Automatically adds annotations for players and the ball in football match videos.
Improves video production efficiency.
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