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Routine Statistical Framework to Speculate Kannada Lip Reading

  • M. S. NandiniEmail author
  • Nagappa U. Bhajantri
  • Trisiladevi C. Nagavi
Conference paper
  • 70 Downloads
Part of the Communications in Computer and Information Science book series (CCIS, volume 1192)

Abstract

This paper envisage the system provides a statistical based effort to predict lip movements of speaker. The words spoken by a person is identified by analyzing the shape of lip movement in every instance of time. The approach learns the process of prediction of shapes of lips based on recognition of movement. The lip shapes are predicted by annotating and tracking the movement of lips and synchronization of shape recognition with respect to time is achieved by extracting the shape of lips with different statistical information extracted from every frames of a video. Hence, grooved statistical data lends the system with more appropriate shape based in terms of mean, variance, standard deviation and various other statistical features. The proposed system based on statistical features extraction leads to lip movement recognition and mapping of various Kannada words into different classes based on recognition of shape leads the system perform good initiation towards achieving the Lip Reading. The effort has provided overall accuracy of 40.21% with distinct statistical pattern of features extraction and classification.

Keywords

Statistical feature extraction Shape classification Lip tracking Lip shape recognition Mapping Kannada lip reading 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2020

Authors and Affiliations

  • M. S. Nandini
    • 1
    Email author
  • Nagappa U. Bhajantri
    • 2
  • Trisiladevi C. Nagavi
    • 3
  1. 1.Department of IS and EngineeringNIE Institute of TechnologyMysoreIndia
  2. 2.Department of CS and EngineeringGovernment Engineering CollegeChamarajanagaraIndia
  3. 3.Department of EngineeringJayachamaraja College of Engineering, JSS Science and Technology University, MysoreMysoreIndia

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