2024
DOI: 10.4038/icter.v17i1.7273
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Applicability of End-to-End Deep Neural Architecture to Sinhala Speech Recognition

Buddhi Gamage,
Randil Pushpananda,
Thilini Nadungodage
et al.

Abstract: This research presents a study on the application of end-to-end deep learning models for Automatic Speech Recognition in the Sinhala language, which is characterized by its high inflection and limited resources.We explore two e2e architectures, namely the e2e Lattice-Free Maximum Mutual Information model and the Recurrent Neural Network model, using a restricted dataset. Statistical models with 40 hours of training data are established as baselines for evaluation. Our pretrained endto-end Automatic Speech Reco… Show more

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