A phoneme based sign language recognition system using interleaving feature and neural network
Date
2012-02-27Author
Paulraj, Murugesa Pandiyan, Assoc. Prof. Dr.
Sazali, Yaacob, Prof. Dr.
Mohd Shuhanaz, Zanar Azalan
Palaniappan, Rajkumar
Metadata
Show full item recordAbstract
A sign language is a language which, instead of
acoustically conveyed sound patterns, uses visually transmitted
sign patterns. Sign languages are commonly developed in hearing
impaired communities, which can include interpreters, friends and
families of deaf people as well as people who are deaf or hard of
hearing themselves. Developing a sign language recognition
system will help the hearing impaired to communicate more
fluently with the normal people. This paper presents a simple sign
language recognition system that has been developed using skin
color segmentation and Neural Network. A simple segmentation
process is carried out to separate the right and left hand regions
from the image frame and in the preprocessing stage the vertical
interleaving method is used to reduce the size of the image. The
2D moment of the right and left hand interleaved image is
obtained as features. Using the interleaved 2D-moment features, a
simple neural network model was developed. The system has been
implemented and tested for its validity. Experimental results show
that the system has a recognition rate of 91.12%.
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