Improving Object Detection Quality in Football Through Super-Resolution Techniques
Karolina Seweryn, Gabriel Ch\k{e}\'c, Szymon {\L}ukasik, Anna Wr\'oblewska

TL;DR
This paper demonstrates that applying super-resolution techniques to football match footage significantly improves object detection accuracy, especially in low-resolution scenarios, with a 12% increase in mean Average Precision.
Contribution
The study introduces the application of state-of-the-art super-resolution methods to enhance object detection in football videos, showing practical benefits for sports analytics and broadcasting.
Findings
12% increase in mean Average Precision at 320x240 resolution
Super-resolution improves detection accuracy more in low-resolution scenarios
Consistent detection quality improvement across different resolution scales
Abstract
This study explores the potential of super-resolution techniques in enhancing object detection accuracy in football. Given the sport's fast-paced nature and the critical importance of precise object (e.g. ball, player) tracking for both analysis and broadcasting, super-resolution could offer significant improvements. We investigate how advanced image processing through super-resolution impacts the accuracy and reliability of object detection algorithms in processing football match footage. Our methodology involved applying state-of-the-art super-resolution techniques to a diverse set of football match videos from SoccerNet, followed by object detection using Faster R-CNN. The performance of these algorithms, both with and without super-resolution enhancement, was rigorously evaluated in terms of detection accuracy. The results indicate a marked improvement in object detection…
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Taxonomy
TopicsAdvanced Optical Sensing Technologies
MethodsSparse Evolutionary Training · RoIPool · Softmax · Convolution · Region Proposal Network · Faster R-CNN
