Distant Speech Recognition
Copyright © 2009 John Wiley & Sons, Ltd
Author(s): Matthias Wölfel, John McDonough
Published Online: 27 APR 2009
Print ISBN: 9780470517048
Online ISBN: 9780470714089
About this Book
A complete overview of distant automatic speech recognition
The performance of conventional Automatic Speech Recognition (ASR) systems degrades dramatically as soon as the microphone is moved away from the mouth of the speaker. This is due to a broad variety of effects such as background noise, overlapping speech from other speakers, and reverberation. While traditional ASR systems underperform for speech captured with far-field sensors, there are a number of novel techniques within the recognition system as well as techniques developed in other areas of signal processing that can mitigate the deleterious effects of noise and reverberation, as well as separating speech from overlapping speakers.
Distant Speech Recognitionpresents a contemporary and comprehensive description of both theoretic abstraction and practical issues inherent in the distant ASR problem.
- Covers the entire topic of distant ASR and offers practical solutions to overcome the problems related to it
- Provides documentation and sample scripts to enable readers to construct state-of-the-art distant speech recognition systems
- Gives relevant background information in acoustics and filter techniques,
- Explains the extraction and enhancement of classification relevant speech features
- Describes maximum likelihood as well as discriminative parameter estimation, and maximum likelihood normalization techniques
- Discusses the use of multi-microphone configurations for speaker tracking and channel combination
- Presents several applications of the methods and technologies described in this book
- Accompanying website with open source software and tools to construct state-of-the-art distant speech recognition systems
This reference will be an invaluable resource for researchers, developers, engineers and other professionals, as well as advanced students in speech technology, signal processing, acoustics, statistics and artificial intelligence fields.