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Exploring the Effect of Core Tactics and Demographics on Squash
Gameplay Patterns Using Computer Vision
Date: 2025-01-01
Creator: Abhiroop Reddy Nagireddygari
Access: Open access
- This paper presents a computer vision system for analyzing common tactical and training pat- terns in squash using player locations and movement dynamics. Leveraging convolutional neural networks (CNNs) such as YOLO and TrackNet, we extract player coordinates on a squash court through a lightweight, single-camera framework. Match footage and detections are segmented by gender, skill level, and match phase to enable contextual comparisons. From 2D coordinates, we generate heatmaps of player locations, court coverage percentages, and distance-over-time graphs to visualize movement tendencies. Our results show that women demonstrate greater ball control and accuracy than men across all levels, while professional players exhibit more aggressive court usage than amateurs. We also identify that games 2 and 3 are the most physically demanding, highlighting a balance between slow starts and fatigue.