Leaf48/YOLO-Models-For-Valorant
Valorant Models in Yolov5 and Yolov7
This project provides pre-trained AI models to help analyze gameplay footage from Valorant (and Krunker). It takes video or images from your game recordings and identifies specific in-game elements like agents or weapons. This is for competitive gamers, esports analysts, or content creators looking to automatically track and understand object locations within their gameplay.
Use this if you want to automatically detect and track in-game objects in your Valorant or Krunker video recordings for performance analysis or content creation.
Not ideal if you're looking for a tool to directly modify game behavior or if you're analyzing a game other than Valorant or Krunker.
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Jan 07, 2026
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