no code implementations • 22 Nov 2021 • Kanav Vats, William McNally, Pascale Walters, David A. Clausi, John S. Zelek
Obtaining player identities is essential for analyzing the game and is used in downstream tasks such as game event recognition.
Optical Character Recognition
Optical Character Recognition (OCR)
+3
no code implementations • 6 Oct 2021 • Kanav Vats, Pascale Walters, Mehrnaz Fani, David A. Clausi, John Zelek
The player identification model further takes advantage of the available NHL game roster data to obtain a player identification accuracy of 83%.
1 code implementation • 20 May 2021 • William McNally, Pascale Walters, Kanav Vats, Alexander Wong, John McPhee
In the primary dataset containing 15k images captured from a face-on view of the dartboard using a smartphone, DeepDarts predicted the total score correctly in 94. 7% of the test images.
no code implementations • 13 Apr 2020 • Kanav Vats, Mehrnaz Fani, Pascale Walters, David A. Clausi, John Zelek
Experimental results demonstrate the effectiveness of the network by obtaining a 55% average F1 score on the NHL dataset and by achieving competitive performance compared to the state of the art on the SoccerNet dataset.
Ranked #4 on
Action Spotting
on SoccerNet