Country | Type | Number | Dated | Case |
United States Of America | Issued Patent | 12,046,038 | 07/23/2024 | 2018-549 |
Background
Identification of next generation sports stars is an important responsibility of a coach. Talent identification has been traditionally based on viewing athletes in a trial game or training session environment. A coach's subjective preconceived notion of the ideal player may result in misjudgments and inconsistencies. In team-based sports, such as soccer, talent identification is a complex process due to different qualities associated with performance including personal and tactical attributes.
Current Invention
Researchers led by Prof. Bir Bhanu at UCR have designed a patent pending system to automate talent identification by generating visual analytics and player statistics for soccer from a video using traditional machine learning algorithms and deep learning techniques for computer vision. Specifically, they have developed:
Example scenarios of players with and without the ball
Sample image of the grid-based localization technique used in the invention
The system and approach that the inventors have developed, now provides:
Proof of concept prototype developed and tested. The testing displays an impressive 92.57% ± 2.92% accuracy in identifying teams. For player analytics their accuracies were, in each case:
Computer vision, Convolutional Neural Networks, Generative Adversarial Network, Soccer, Video analytics, Talent identification, Soccer player coaching, Player development, Player tracking