Yolov5m Csgo
Object detection model based on YOLOv5m, specifically optimized for objects in CSGO
Downloads 79
Release Time : 12/29/2022
Model Overview
This model is an object detection model based on the YOLOv5 architecture, specifically designed to detect various objects in CSGO. The model was trained on the keremberke/csgo-object-detection dataset and achieves high detection accuracy.
Model Features
High Precision Detection
Achieves 0.932 mAP@0.5 accuracy on CSGO object detection tasks
YOLOv5 Architecture
Based on the popular YOLOv5 object detection architecture, balancing speed and accuracy
Game Specialized
Specifically optimized for CSGO game scenes, accurately identifying various in-game objects
Model Capabilities
Real-time Object Detection
Game Object Recognition
Multi-category Object Detection
Use Cases
Game Analysis
CSGO Object Detection
Used to detect weapons, characters, items, and other objects in CSGO
Can accurately identify key objects in game scenes
E-sports
Match Analysis
Used for scene analysis and statistics in e-sports competitions
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