The rapid progress in deep learning-based computer vision has opened unprecedented possibilities in computing various high-level analytics for sports. Artificial intelligence techniques such as predictive analysis, automatic highlight generation, and… Click to show full abstract
The rapid progress in deep learning-based computer vision has opened unprecedented possibilities in computing various high-level analytics for sports. Artificial intelligence techniques such as predictive analysis, automatic highlight generation, and assistant coaching have been applied to improve performance and decision-making for teams and players. To perform any high-level analysis from a game match, collecting the locations (where) and identities (who) of players is crucial and challenging. In this paper, a universal JErsey number DEtector (JEDE) for player identification is presented that predicts players’ bounding boxes and keypoints, along with bounding boxes and classes of jersey digits and numbers in an end-to-end manner. Instead of generating digit proposals from pre-defined anchors, JEDE predicts more robust proposals guided by players’ features and pose estimation. Moreover, a dataset is collected from soccer and basketball matches with annotations on players’ bounding boxes and body keypoints, and jersey digits’ bounding boxes and labels. Extensive experimental results and ablation studies on the collected dataset show that the proposed method outperforms the state-of-the-art methods by a large margin. Both quantitative and qualitative results also demonstrate JEDE’s superior practicality and generalizability over different sports.
               
Click one of the above tabs to view related content.