SMART FOOTBALL: IMPLEMENTATION OF PLAYER TRACKING WITH PLAYER LOCALIZATION ON FOOTBALL MATCH VIDEOS
As a popular sport, soccer game can be improved in quality through technological innovations in the analysis of match videos. Football match videos in Indonesia are available and easily accessible through broadcasts both television and streaming applications. However, there is no technology that...
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Format: | Final Project |
Language: | Indonesia |
Online Access: | https://digilib.itb.ac.id/gdl/view/86188 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | As a popular sport, soccer game can be improved in quality through technological
innovations in the analysis of match videos. Football match videos in Indonesia are
available and easily accessible through broadcasts both television and streaming
applications. However, there is no technology that is able to track the player's
movements from a video, which will be useful for game strategy analysis. There is
a challenge in implementing this technology, namely the characteristics of
broadcast videos that have a change in camera perspective. This challenge can be
solved using deep learning models and computer vision to detect the position of the
field and calibrate the camera. With the help of the player object detection model
that has been developed, the player localization feature can be created.This feature
is able to track the movement of players relative to the field to overcome the
challenges of broadcast video characteristics and generate data on the results of
player tracking on the field. The methods used include semantic segmentation of
field elements that results in the detection of keypoints and field lines and camera
calibration that produces homography to transform the coordinates of objects from
imagery to the real world. The results of the study show that the player localization
feature developed is able to achieve quite high accuracy with a final score of 73.7
and an IoU of 98.6%. These findings show great potential in video analysis of
football matches through the application of player localization to player tracking to
generate insights in evaluating game strategies. |
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