We describe the technique used to train and customize deep learning models to detect, track, and identify soccer
players, who are recorded during soccer games using custom camera settings. The player detection model is
customized to allow the detection of person class objects from video input. Two newly developed filters, spatial feature
filters, and bounding box location filters have described that help in classifying players and audiences. A new tacking
paradigm is illustrated to generate tracks of soccer players with fewer swaps, thereby reducing efforts of human
annotators in later stages. A new method of identifying every player by detecting player t-shirt numbers has been
developed and illustrated. This method provides tracks with high confidence and identity to most of the player
corresponding to individual t-shirt number. Finally, we provide a unique result assessment technique to judge the
performance of the complete model.
Funding
Innovate UK
History
School
Science
Department
Computer Science
Published in
Proceedings of SPIE
Volume
11605
Source
2020 The 13th International Conference on Machine Vision (ICMV 2020)
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