Publication: EasyTalk: A Translator for Sri Lankan Sign Language using Machine Learning and Artificial Intelligence
Type:
Article
Date
2020-12-10
Journal Title
Journal ISSN
Volume Title
Publisher
2020 2nd International Conference on Advancements in Computing (ICAC), SLIIT
Abstract
Sign language is used by the hearing-impaired
and inarticulate community to communicate with each other.
But not all Sri Lankans are aware of the sign language or verbal
languages and a translation is required. The Sri Lankan Sign
Language is tightly bound to the hearing-impaired and
inarticulate. The paper presents EasyTalk, a sign language
translator which can translate Sri Lankan Sign Language into
text and audio formats as well as translate verbal language into
Sri Lankan Sign Language which would benefit them to express
their ideas. This is handled in four separate components. The
first component, Hand Gesture Detector captures hand signs
using pre-trained models. Image Classifier component classifies
and translates the detected hand signs. The Text and Voice
Generator component produces a text or an audio formatted
output for identified hand signs. Finally, Text to Sign Converter
works on converting an entered English text back into the sign
language based animated images. By using these techniques,
EasyTalk can detect, translate and produce relevant outputs
with superior accuracy. This can result in effective and efficient
communication between the community with differently-abled
people and the community with normal people.
Description
Keywords
Machine Learning, Image processing, low resolution image recognition, convolutional neural networks, Natural Language Processing, real-time translation, semantic analysis, text to speech conversion
