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ML-Based Approach for NFL Defensive Pass Interference Prediction Using GPS Tracking Data (CROSBI ID 708836)

Prilog sa skupa u zborniku | ostalo | domaća recenzija

Skoki, Arian ; Lerga Jonatan ; Štajduhar, Ivan ML-Based Approach for NFL Defensive Pass Interference Prediction Using GPS Tracking Data // MIPRO. Opatija, 2021. str. 1199-1204

Podaci o odgovornosti

Skoki, Arian ; Lerga Jonatan ; Štajduhar, Ivan

engleski

ML-Based Approach for NFL Defensive Pass Interference Prediction Using GPS Tracking Data

Defensive Pass Interference (DPI) is one of the most impactful penalties in the NFL. DPI is a spot foul, yielding an automatic first down to the team in possession. With such an influence on the game, referees have no room for a mistake. It is also a very rare event, which happens 1-2 times per 100 pass attempts. With technology improving and many IoT wearables being put on the athletes to collect valuable data, there is a solid ground for applying machine learning (ML) techniques to improve every aspect of the game. The work presented here is the first attempt in predicting DPI using player tracking GPS data. The data we used was collected by NFL’s Next Gen Stats throughout the 2018 regular season. We present ML models for highly imbalanced time-series binary classification: LSTM, GRU, ANN, and Multivariate LSTM-FCN. Results showed that using GPS tracking data to predict DPI has limited success. The best performing models had high recall with low precision which resulted in the classification of many false positive examples. Looking closely at the data confirmed that there is just not enough information to determine whether a foul was committed. This study might serve as a filter for multi-step pipeline for video sequence classification which could be able to solve this problem.

Defensive Pass Interference ; GPS ; prediction ; timeseries ; NFL

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Podaci o prilogu

1199-1204.

2021.

objavljeno

Podaci o matičnoj publikaciji

MIPRO

Opatija:

1847-3938

1847-3946

Podaci o skupu

MIPRO 2021

predavanje

27.09.2021-01.10.2021

Opatija, Hrvatska

Povezanost rada

Interdisciplinarne tehničke znanosti