Hearing loss affects around 360 million people worldwide. According to the WHO, there are 328 million people and 32 million children who are deaf. Deaf and dumb individuals account for over 9.1 billion persons on the planet. Only 700 schools in India teach sign language, and many people are unaware that sign language exists. Despite the fact that technology has made human existence easier, there are still those people who are finding it difficult. We offer a new electronic device in this idea that will make communication easier for them. The wearable electronic device aids persons with speech, hearing, and visual impairments. This wearable electronic aid will be used by people with the aforementioned difficulties who do not know sign language to communicate with others.

1.
C. S.
Fahn
and
H
Sun
, “
Development of a sensory data glove using neural-network-based calibration
,”
Corrections of IC-AT 2000 Proceeding
, pp
239
245
,
2000
2.
C. S.
Ingulkar
and
A. N.
Gaikwad
, “
Hand data glove: a wearable real time device for human computer interaction
,”
International Journal of Science and Engineering
, vol.
1
, pp-
99
104
,
2013
3.
C. Y. J.
Peng
,
K. L.
Lee
and
G. M.
Ingersoll
, “
An introduction to logistic regression analysis and reporting
,”
The Journal of Educational Research
, vol.
96
, no
1
,
2002
4.
Jean
,
C.
, and
Peter
,
B.
,
“Recognition of Arm Gestures Using Multiple Orientation Sensors: Gesture Classification
.
IEEE Intelligent transportation systems conference on electronics
, Vol.
13
, No.
1
, pp.
334
520
,
2004
5.
N.
Tran
,
S.
Fugate
,
M.
Ceruti
,
L.
Duffy
and
H.
Phan
Halleffect sensor gesture recognition, information coding, and processing
,” US patent 8,421,448 B1, Apr 16,
2013
6.
Otiniano
,
R.
, and
Amara
,
C.
Finger spelling recognition from rgb-d information using kernel descriptor
”,
IEEE Transactions on neural systems and rehabilitation engineering
, Vol.
28
, No.
8
, pp.
124
184
,
2006
7.
P.
Garg
,
N.
Aggarwal
and
S.
Sofat
, “
Vision based hand gesture recognition
,”
World Academy of Science, Engineering and Technology
, vol.
3
,
2009
8.
P.
Halarankar
,
S.
Shah
,
H.
Shah
,
H.
Shah
and
J.
Shah
Gesture recognition technology: a review
,”
International Journal of Engineering Science and Technology (IJEST)
, vol.
4
, no
11
,
2012
9.
R
Liang
,
M
Ouhyoung
, “A real-time continuous Gesture recognition system for sign language,”
Third IEEE International Conference on Automatic Face and Gesture Recognition
, pp.
558567
, Japan,
1998
.
10.
V.
Pavlovic
,
R.
Sharma
and
T. S.
Huang
, “
Visual interpretation of hand gestures for human-computer interaction: a review
,”
IEEE Transactions on Pattern Analysis and Machine Intelligence
, vol.
19
, no.
7
, pp.
677
692
, July
1997
11.
Zhengmao
,
Z.
,
Prashan
,
R.
,
Monaragala
,
N.
,
Malin
,
P.
“Dynamic hand gesture recognition system using moment invariants IEEE Transactions on neural networking and computing
, Vol.
21
, No.
1
, pp.
1034
1320
,
2010
This content is only available via PDF.
You do not currently have access to this content.