Robust methods in automatic speech recognition and understanding
نویسنده
چکیده
This paper overviews robust architecture and modeling techniques for automatic speech recognition and understanding. The topics include robust acoustic and language modeling for spontaneous speech recognition, unsupervised adaptation of acoustic and language models, robust architecture for spoken dialogue systems, multi-modal speech recognition, and speech understanding. This paper also discusses the most important research problems to be solved in order to achieve ultimate robust speech recognition and understanding systems.
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