Recognition of Strokes in Tennis Videos Using Deep Learning

No Thumbnail Available

Date

2019-07

Journal Title

Journal ISSN

Volume Title

Publisher

Indian Statistical Institute,Kolkata

Abstract

Prior introduction of neural nets to domain of computer vision, action recognition requires specific domain knowledge. Still domain knowledge is useful in action recognition but with availability of huge data and neural nets, data-driven feature learning methods have emerged as an alternative. Recent trends in action recognition uses LSTM and its various modifications, as LSTM have memory retaining capability which other architectures lake. In this work we performed action recognition on different tennis strokes. Our work relay on architecture proposed By Husain, Dellen, and Torras, 2016. Architecture is comprised of various modified VGG-nets connected in parallel. As it doesn’t include LSTM, which makes it different than other works.

Description

Dissertation under the supervision of Dr. Kumar Sankar Ray

Keywords

Deep Learning, VGG16

Citation

21p.

Endorsement

Review

Supplemented By

Referenced By