Publication: Cricket Shot Image Classification Using Random Forest
Type:
Article
Date
2021-12-09
Journal Title
Journal ISSN
Volume Title
Publisher
2021 3rd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Cricket is one of the top 10 most played sport across
the world regardless of age and gender. However, learning cricket
has been quite challenging as the majority of the cricket-playing
individuals are unable to afford quality infrastructure. While this
has opened up many research opportunities to provide solutions
to automatically learn cricket, very little work has been done
in this era. In this paper, we focus on the batting skills of
cricket players. We develop a Random Forest model to classify the
cricket shot images using human body keypoints extracted with
MediaPipe. Experiment results show the proposed model achieves
an F1-score of 87% and outperforms the existing solution in a
5% margin. Further, we propose a similarity estimation approach
to compare the user’s cricket image with popular international
cricket players’ cricket shot images of the same type and retrieve
the most similar one. The mobile application we developed based
on our solution will enable cricket-playing individuals to analyze,
improve and track their batting performances without the need
of having a coach.
Description
Keywords
Cricket Shot, Image Classification, Decision Tree, Random Forest Algorithm, MediaPipe
