American Sign Language Recognition Using Deep Learning
Abstract
American Sign Language (ASL) is a visual
gestural language used by the deaf community for
communication. There exists a communication gap
between hearing-impairedhearing and the normal
people because most normal people do not understand
the sign language. Conversations with the hearingimpaired
people becomes more difficult as most of us do
not know the sign language. Hand movements are one of
the most powerful nonverbal communication methods
which uses both non-manual and
manualcorrespondence. ASL-to-text ASL to text
interpreting technology using hand gesture recognition
could fill up this communication gap. Recently, the hand
gesture recognition systems received a great attention
and many researchers have been doing studies on the
methods for hand gesture recognition for many
different purposes. Sign Language recognition is one
main purpose among those purposes. Among these the
Finger Spelling method is a very interesting research
problem in computer vision which has being addressed
for years with different kinds of applications in various
domains. Inthis paper a survey of existing hand gesture
recognition systems and sign language recognition
systems are presented for the recognition of Static
Finger Spelling method in the American Sign Language.
This sign language recognition can be achieved by using
sensor- based or vision-based approaches. In this paper,
both these approaches are reviewed along with the
background of the problem and the pros and cons are
also discussed algorithms.
Collections
- Computing [72]