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Yolov5s Clash Of Clans

Developed by keremberke
A lightweight object detection model based on the YOLOv5s architecture, specifically designed to recognize various elements in the Clash of Clans game.
Downloads 74
Release Time : 12/30/2022

Model Overview

This model is a small version (s) of YOLOv5, optimized for Clash of Clans game scenarios, capable of efficiently identifying in-game elements such as buildings and characters.

Model Features

Lightweight and Efficient
Based on the YOLOv5s architecture, the model is small in size and fast in inference, suitable for real-time applications.
Game-Specific Optimization
Specially trained and optimized for Clash of Clans game elements.
High-Precision Detection
Achieves 82.78% mAP@0.5 accuracy on the validation set.

Model Capabilities

Game Element Recognition
Real-time Object Detection
Multi-object Simultaneous Detection

Use Cases

Game Analysis
Game Screen Element Recognition
Automatically identifies in-game elements such as buildings and defense facilities on the game screen.
Can be used for game strategy analysis and automation.
Game Replay Analysis
Batch processes game replay files for element statistics.
Helps players analyze battle strategies.
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