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This book covers the state-of-the-art in deep neural-network-based
methods for noise robustness in distant speech recognition
applications. It provides insights and detailed descriptions of
some of the new concepts and key technologies in the field,
including novel architectures for speech enhancement, microphone
arrays, robust features, acoustic model adaptation, training data
augmentation, and training criteria. The contributed chapters also
include descriptions of real-world applications, benchmark tools
and datasets widely used in the field. This book is intended for
researchers and practitioners working in the field of speech
processing and recognition who are interested in the latest deep
learning techniques for noise robustness. It will also be of
interest to graduate students in electrical engineering or computer
science, who will find it a useful guide to this field of research.
This book covers the state-of-the-art in deep neural-network-based
methods for noise robustness in distant speech recognition
applications. It provides insights and detailed descriptions of
some of the new concepts and key technologies in the field,
including novel architectures for speech enhancement, microphone
arrays, robust features, acoustic model adaptation, training data
augmentation, and training criteria. The contributed chapters also
include descriptions of real-world applications, benchmark tools
and datasets widely used in the field. This book is intended for
researchers and practitioners working in the field of speech
processing and recognition who are interested in the latest deep
learning techniques for noise robustness. It will also be of
interest to graduate students in electrical engineering or computer
science, who will find it a useful guide to this field of research.
With this comprehensive guide you will learn how to apply Bayesian
machine learning techniques systematically to solve various
problems in speech and language processing. A range of statistical
models is detailed, from hidden Markov models to Gaussian mixture
models, n-gram models and latent topic models, along with
applications including automatic speech recognition, speaker
verification, and information retrieval. Approximate Bayesian
inferences based on MAP, Evidence, Asymptotic, VB, and MCMC
approximations are provided as well as full derivations of
calculations, useful notations, formulas, and rules. The authors
address the difficulties of straightforward applications and
provide detailed examples and case studies to demonstrate how you
can successfully use practical Bayesian inference methods to
improve the performance of information systems. This is an
invaluable resource for students, researchers, and industry
practitioners working in machine learning, signal processing, and
speech and language processing.
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