Papers
arxiv:2301.10052

Event Detection in Football using Graph Convolutional Networks

Published on Jan 24, 2023
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Abstract

Graph Convolutional Networks are used to model and detect events in football videos by representing players and the ball as a graph and applying graph convolutional layers and pooling methods.

AI-generated summary

The massive growth of data collection in sports has opened numerous avenues for professional teams and media houses to gain insights from this data. The data collected includes per frame player and ball trajectories, and event annotations such as passes, fouls, cards, goals, etc. Graph Convolutional Networks (GCNs) have recently been employed to process this highly unstructured tracking data which can be otherwise difficult to model because of lack of clarity on how to order players in a sequence and how to handle missing objects of interest. In this thesis, we focus on the goal of automatic event detection from football videos. We show how to model the players and the ball in each frame of the video sequence as a graph, and present the results for graph convolutional layers and pooling methods that can be used to model the temporal context present around each action.

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