Scopus Indexed Publications

Paper Details


Title
IncePTB: A CNN based classification approach for recognizing traditional Bengali games
Author
Mohammad Shakirul Islam, Ferdouse Ahmed Foysal, MD. ENAMUL KARIM, Nafis Neehal, Syed Akhter Hossain,
Email
shakirul15-311@diu.edu.bd
Abstract

    Sports activities are an integral part of our day to day life. Introducing autonomous decision making and predictive models to recognize and analyze different sports events and activities has become an emerging trend in computer vision arena. Albeit the advances and vivid applications of artificial intelligence and computer vision in recognizing different popular western games, there remains a very minimal amount of efforts in the application of computer vision in recognizing traditional Bangladeshi games. We, in this paper, have described a novel Deep Learning based approach for recognizing traditional Bengali games. We have retrained the final layer of the renowned Inception V3 architecture developed by Google for our classification approach. Our approach shows promising results with an average accuracy of 80% approximately in correctly recognizing among 5 traditional Bangladeshi sports events.

    Keywords
    Sports Activity Recognition; Object Detection; Deep Learinng; ClassificationTensor; Flow Inception-v3; Transfer Learning; Computer Vision; Convolutional neural network
    Journal or Conference Name
    Procedia Computer Science
    Publication Year
    2018
    Indexing
    scopus