Document Type
Article
Publication Date
2-2021
Publication Source
Journal of Imaging
Abstract
Automatic event recognition in sports photos is both an interesting and valuable research topic in the field of computer vision and deep learning. With the rapid increase and the explosive spread of data, which is being captured momentarily, the need for fast and precise access to the right information has become a challenging task with considerable importance for multiple practical applications, i.e., sports image and video search, sport data analysis, healthcare monitoring applications, monitoring and surveillance systems for indoor and outdoor activities, and video captioning. In this paper, we evaluate different deep learning models in recognizing and interpreting the sport events in the Olympic Games. To this end, we collect a dataset dubbed Olympic Games Event Image Dataset (OGED) including 10 different sport events scheduled for the Olympic Games Tokyo 2020. Then, the transfer learning is applied on three popular deep convolutional neural network architectures, namely, AlexNet, VGG-16 and ResNet-50 along with various data augmentation methods. Extensive experiments show that ResNet-50 with the proposed photobombing guided data augmentation achieves 90% in terms of accuracy.
ISBN/ISSN
2313-433X
Document Version
Published Version
Publisher
MDPI
Volume
7
Peer Reviewed
yes
Issue
2
Sponsoring Agency
University of Dayton SEED Grant, Libyan Ministry of Education, University of Dayton Open Access Fund
eCommons Citation
Mohamad, Yousef I.; Baraheem, Samah S.; and Nguyen, Tam Van, "Olympic Games Event Recognition via Transfer Learning with Photobombing Guided Data Augmentation" (2021). Computer Science Faculty Publications. 191.
https://ecommons.udayton.edu/cps_fac_pub/191
Comments
This open-access article is provided for download in compliance with the publisher’s policy on self-archiving. To view the version of record, use the DOI: https://doi.org/10.3390/jimaging7020012