Tracking the ball location is essential for automated game analysis in complex ball-centered team sports such as football. However, it has always been a challenge for image processing-based techniques because the players and other factors often occlude the view of the ball. This study proposes an automated machine learning-based method for predicting the ball location from players' behavior on the pitch. The model has been built by processing spatial information of players acquired from optical tracking data. Optical tracking data include samples from 300 matches of the 2017-2018 season of the Turkish Football Federation's Super League. We use neural networks to predict the ball location in 2D axes. The average coefficient of determination ...
The soccer video analysis has a lot of importance these days commercially. There are many challenges...
SciSports is a Dutch startup company specializing in football analytics. This paper describes a join...
Sports analysis that traditional computer vision techniques have long dominated is today getting rep...
In recent years, analytics became increasingly important in sports. Newly developed, wearable tracki...
MasterAlong with the advent of deep learning, soccer video has been widely used for soccer analytics...
Nowadays, technology is increasingly used in soccer. An open challenge is how to use the massive dat...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
To analyze a soccer game, it is useful to gather statistics of the players. In order to do this auto...
The purpose of this research was to determine the on-field playing positions of a group of football ...
Recent developments in \ac{ML} have paved the way for unprecedented possibilities in the field of da...
Indoor soccer has been of tactical and scientific interest, with applications dedicated to analyze t...
This paper demonstrates innovative techniques for estimating the trajectory of a soccer ball from mu...
This paper describes models for detecting individual and team ball possession in soccer based on pos...
<div><p>This paper describes models for detecting individual and team ball possession in soccer base...
SciSports is a Dutch startup company specializing in football analytics. This paper describes a join...
The soccer video analysis has a lot of importance these days commercially. There are many challenges...
SciSports is a Dutch startup company specializing in football analytics. This paper describes a join...
Sports analysis that traditional computer vision techniques have long dominated is today getting rep...
In recent years, analytics became increasingly important in sports. Newly developed, wearable tracki...
MasterAlong with the advent of deep learning, soccer video has been widely used for soccer analytics...
Nowadays, technology is increasingly used in soccer. An open challenge is how to use the massive dat...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Electrical Engineering and Comp...
To analyze a soccer game, it is useful to gather statistics of the players. In order to do this auto...
The purpose of this research was to determine the on-field playing positions of a group of football ...
Recent developments in \ac{ML} have paved the way for unprecedented possibilities in the field of da...
Indoor soccer has been of tactical and scientific interest, with applications dedicated to analyze t...
This paper demonstrates innovative techniques for estimating the trajectory of a soccer ball from mu...
This paper describes models for detecting individual and team ball possession in soccer based on pos...
<div><p>This paper describes models for detecting individual and team ball possession in soccer base...
SciSports is a Dutch startup company specializing in football analytics. This paper describes a join...
The soccer video analysis has a lot of importance these days commercially. There are many challenges...
SciSports is a Dutch startup company specializing in football analytics. This paper describes a join...
Sports analysis that traditional computer vision techniques have long dominated is today getting rep...