Sign Language to Text Conversion in Real Time using Transfer Learning
Thakar, Shubham, Shah, Samveg, Shah, Bhavya, Nimkar, Anant V.
–arXiv.org Artificial Intelligence
The people in the world who are hearing impaired face many obstacles in communication and require an interpreter to comprehend what a person is saying. There has been constant scientific research and the existing models lack the ability to make accurate predictions. So we propose a deep learning model trained on ASL i.e. American Sign Language which will take actions in the form of ASL as input and translate it into text. To achieve the translation a Convolution Neural Network model and a transfer learning model based on the VGG16 architecture are used. There has been an improvement in accuracy from 94% of CNN to 98.7% of Transfer Learning, an improvement of 5%. An application with the deep learning model integrated has also been built.
arXiv.org Artificial Intelligence
Dec-7-2022
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