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Yolov5m Nfl

Developed by keremberke
Object detection model based on YOLOv5m architecture, specifically designed for detecting objects in NFL games
Downloads 75
Release Time : 12/30/2022

Model Overview

This model is an object detection model based on the YOLOv5m architecture, optimized specifically for detecting objects in NFL games. It can identify and locate various objects in the game, such as players and the ball.

Model Features

Efficient object detection
Based on the YOLOv5m architecture, providing fast and accurate object detection capabilities
Specialized for NFL games
Optimized specifically for NFL game scenarios, effectively identifying various objects in the game
Adjustable parameters
Supports adjusting confidence thresholds, IoU thresholds, and other parameters to adapt to different application scenarios

Model Capabilities

Object detection in images
Simultaneous recognition of multiple objects
Bounding box prediction

Use Cases

Sports analysis
NFL game analysis
Used to analyze NFL game videos, automatically identifying objects such as players and the ball
Achieved 0.314 mAP@0.5 on the validation set
Sports broadcasting
Automatic annotation
Automatically annotating key objects in live sports or replays
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