Using Artificial Vision Techniques for Individual Player Tracking in Sport Events
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http://hdl.handle.net/2183/23873Coleccións
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Using Artificial Vision Techniques for Individual Player Tracking in Sport EventsData
2019-07-31Cita bibliográfica
CASTRO, Roberto López; CANOSA, Diego Andrade. Using Artificial Vision Techniques for Individual Player Tracking in Sport Events. En Multidisciplinary Digital Publishing Institute Proceedings. 2019. p. 21.
Resumo
[Abstract] We introduce a hybrid approach that can track an individual football player in a video sequence. This solution achieves a good balance between speed and accuracy, combining traditional object tracking techniques with Deep Neural Networks (DNN). While traditional techniques lack accuracy, the main shortcoming of DNN is performance. Both types of techniques complement to each other to provide an accurate and fast object tracking approach that does not require human intervention. The accuracy of our solution has been validated using the SoccerNet Dataset against hand annotated video sequences. For the tracking of 4 different players of 2 different teams our approach has achieved an Area Under Curve (AUC) of 0.66, in terms of accuracy, and a frame rate of 91.75 FPS, in terms of performance, running on a Nvidia GTX 1080Ti GPU.
Palabras chave
Artificial vision
Object tracking
Object detection
Machine learning
Deep learning
Real time
Object tracking
Object detection
Machine learning
Deep learning
Real time
Versión do editor
Dereitos
Atribución 3.0 España
ISSN
2504-3900