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Silent voice: harnessing deep learning for lip-reading in Bangla

Citation

Abstract

Understanding speech just through lip movement is known as lipreading. It is a crucial component of interpersonal interactions. The majority of the previous initiatives attempted to address the English lipreading issue. However, our goal is to build up a deep neural network for the Bangla language that can produce comprehensible speech from silent videos just by capturing the speaker’s lip movements. Despite the fact that there is research on this topic in various languages, Bangla does not currently have a study or a suitable corpus to conduct research. Hence, we created a dataset of 4000 videos where we selected 20 Bangla words and these words were pronounced by 65 different speakers. Then we implemented models based on CNN-RNN architecture. Two models LipNet and autoencoder-decoder were used in previous research and two custom models were implemented as a part of our own experiments. Finally, Lip-Net exhibits a reasonable level of performance with an accuracy of 62%, while Auto Encoder-Decoder performs poorly with an accuracy of 49.65%. Custom Model-1 shows a substantial rise in accuracy with 70.86%, and Custom Conv-LSTM exhibits the best overall performance with a maximum accuracy of 76.24%.

Description

Cataloged from PDF version of thesis.
Includes bibliographical references (pages 47-49).
This thesis is submitted in partial fulfillment of the requirements for the degree of Bachelor of Science in Computer Science and Engineering, 2024.

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Thesis