Automatic Speech Recognition
Automatic Speech Recognition (ASR) aims to accurately transcribe spoken language into text, driving research into robust and efficient models. Current efforts focus on improving accuracy and robustness through techniques like consistency regularization in Connectionist Temporal Classification (CTC), leveraging pre-trained multilingual models for low-resource languages, and integrating Large Language Models (LLMs) for enhanced contextual understanding and improved handling of diverse accents and speech disorders. These advancements have significant implications for accessibility, enabling applications in diverse fields such as healthcare, education, and human-computer interaction.
Papers
BayesSpeech: A Bayesian Transformer Network for Automatic Speech Recognition
Will Rieger
Using Kaldi for Automatic Speech Recognition of Conversational Austrian German
Julian Linke, Saskia Wepner, Gernot Kubin, Barbara Schuppler
Multi-resolution location-based training for multi-channel continuous speech separation
Hassan Taherian, DeLiang Wang