Indian Sign Language Recognition System using Combinational Features

Jeevan Musale, C.O.E Osmanabad, Affiliated to Dr.B.A.M.U,Aurangabad,Maharashtra,India.; Ashok P. Mane ,C.O.E Osmanabad, Affiliated to Dr.B.A.M.U,Aurangabad,Maharashtra,India.

SURF, SVM, HSI, RBF, and VRS etc.

This paper proposes a programmed gesture recognition or dishtinguishment approach to Indian communication via gestures (ISL). Because the deaf and dumb people feelings, thoughts and ideas is to be presented via gestures utilization both control to speak to each letter set by using this system we are able deliver them right and easily . We recommend a approach which addresses local-global vagueness identification, inter-class variability upgrade to every hand gesture.
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Paper ID: GRDJEV01I040099
Published in: Volume : 1, Issue : 4
Publication Date: 2016-04-01
Page(s): 19 - 23