Real-Time Football Match Analysis Using Deep Learning
Abstract
Computer vision and machine learning have revolutionized the field of sports analytics by enabling analysts, coaches, and players to obtain important insights about the performance of football matches. The primary difficulty in football analytics is precisely identifying and following players, officials, and the ball during play, particularly in the face of changing circumstances such player occlusion, rapid movement, and shifting camera angles. We suggested a solution to this problem that uses sophisticated computer vision algorithms for accurate tracking and identification along with object detection models like YOLO (You Only Look Once).
Key performance metrics including players' speed, total distance traveled, ball possession, and pass accuracy may all be measured with accurate tracking. In order to accomplish this, the system analyzes video inputs and uses a YOLOv8x model for reliable real-time player detection and a fine-tuned YOLOv5 model designed especially for small, fast-moving objects like the football. In order to ensure accurate player movement calculations, K-means clustering is also utilized for team identification based on jersey color segmentation, and optical flow is utilized to estimate camera motion.
Accurate distance and speed measurements are made possible by the conversion of pixel distances to real-world units by perspective transformation. To depict player heatmaps, pass maps, and possession statistics, we created visual analytics tools with an interactive user interface for effective use. The efficiency of our method is demonstrated by a comparison of our model's accuracy and performance with other industry-standard models. More thorough and precise football match analysis will be possible with this system's support for numerous camera angles, integration of prediction models, and real-time analytic features.
How to Cite This Article
Pavani Priyal Dharnamoni, Katakam Navya Sri, Kamble Pradnya, Dr. D Shravani (2025). Real-Time Football Match Analysis Using Deep Learning . International Journal of Multidisciplinary Research and Growth Evaluation (IJMRGE), 6(2), 710-715. DOI: https://doi.org/10.54660/.IJMRGE.2025.6.2.710-715