Abstract
The Arabic Sign Language has endorsed outstanding research achievements for
identifying gestures and hand signs using the deep learning methodology. The
term "forms of communication" refers to the actions used by hearing-impaired
people to communicate. These actions are difficult for ordinary people to
comprehend. The recognition of Arabic Sign Language (ArSL) has become a
difficult study subject due to variations in Arabic Sign Language (ArSL) from
one territory to another and then within states. The Convolution Neural Network
has been encapsulated in the proposed system which is based on the machine
learning technique. For the recognition of the Arabic Sign Language, the
wearable sensor is utilized. This approach has been used a different system
that could suit all Arabic gestures. This could be used by the impaired people
of the local Arabic community. The research method has been used with
reasonable and moderate accuracy. A deep Convolutional network is initially
developed for feature extraction from the data gathered by the sensing devices.
These sensors can reliably recognize the Arabic sign language's 30 hand sign
letters. The hand movements in the dataset were captured using DG5-V hand
gloves with wearable sensors. For categorization purposes, the CNN technique is
used. The suggested system takes Arabic sign language hand gestures as input
and outputs vocalized speech as output. The results were recognized by 90% of
the people.