Player Pressure Map -- A Novel Representation of Pressure in Soccer for
Evaluating Player Performance in Different Game Contexts
- URL: http://arxiv.org/abs/2401.16235v2
- Date: Thu, 7 Mar 2024 18:27:52 GMT
- Title: Player Pressure Map -- A Novel Representation of Pressure in Soccer for
Evaluating Player Performance in Different Game Contexts
- Authors: Chaoyi Gu, Jiaming Na, Yisheng Pei, Varuna De Silva
- Abstract summary: This paper aims to leverage both tracking and event data and game footage to capture the pressure experienced by the possession team in a soccer game scene.
We propose a player pressure map to represent a given game scene, which lowers the dimension of raw data and still contains rich contextual information.
- Score: 0.5120567378386615
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In soccer, contextual player performance metrics are invaluable to coaches.
For example, the ability to perform under pressure during matches distinguishes
the elite from the average. Appropriate pressure metric enables teams to assess
players' performance accurately under pressure and design targeted training
scenarios to address their weaknesses. The primary objective of this paper is
to leverage both tracking and event data and game footage to capture the
pressure experienced by the possession team in a soccer game scene. We propose
a player pressure map to represent a given game scene, which lowers the
dimension of raw data and still contains rich contextual information. Not only
does it serve as an effective tool for visualizing and evaluating the pressure
on the team and each individual, but it can also be utilized as a backbone for
accessing players' performance. Overall, our model provides coaches and
analysts with a deeper understanding of players' performance under pressure so
that they make data-oriented tactical decisions.
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