AI beats goalkeepers at predicting which way penalty taker will shoot
By analysing videos of penalty kicks, a deep learning model was able to predict whether a shot would go to the goalkeeper’s left or right with 64 per cent accuracy
By Chris Stokel-Walker
23 July 2025
Goalkeepers struggle to guess which way a penalty taker will shoot
JAVIER SORIANO/AFP via Getty Images
Deep learning models trained on more than 1000 penalty kicks in football matches can predict which way the ball will go better than real-life goalkeepers.
“Penalty kicks are some of the most decisive moments in soccer, often determining the outcome of major tournaments,” says David Freire-Obregón at the University of Las Palmas de Gran Canaria, Spain. “Despite this, real-time support for goalkeepers is still largely intuition-based. We wanted to explore whether machine learning could predict shot direction from a kicker’s body motion.”
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So Freire-Obregón and his colleagues scraped 1010 penalty kicks from real, televised matches in Spain. Of those clips, 640 were deemed analysable by AI models, while the remainder were thrown away for being blurred, too short or obstructed.
Each clip was then fed into 22 deep learning models, which had to guess whether the penalty would go left, right or down the middle, based on the video footage and the simple fact of whether the player was right- or left-footed.
The best-performing model was able to correctly identify whether the ball went right, left or down the middle 52 per cent of the time – better than the 46 per cent accuracy real goalkeepers had in the matches. When the researchers removed the less-used middle option, model accuracy increased to 64 per cent – nearly 10 percentage points higher than human goalkeepers given the same information.