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This book will help readers understand fundamental and advanced
statistical models and deep learning models for robust speaker
recognition and domain adaptation. This useful toolkit enables
readers to apply machine learning techniques to address practical
issues, such as robustness under adverse acoustic environments and
domain mismatch, when deploying speaker recognition systems.
Presenting state-of-the-art machine learning techniques for speaker
recognition and featuring a range of probabilistic models, learning
algorithms, case studies, and new trends and directions for speaker
recognition based on modern machine learning and deep learning,
this is the perfect resource for graduates, researchers,
practitioners and engineers in electrical engineering, computer
science and applied mathematics.
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.
Source Separation and Machine Learning presents the fundamentals in
adaptive learning algorithms for Blind Source Separation (BSS) and
emphasizes the importance of machine learning perspectives. It
illustrates how BSS problems are tackled through adaptive learning
algorithms and model-based approaches using the latest information
on mixture signals to build a BSS model that is seen as a
statistical model for a whole system. Looking at different models,
including independent component analysis (ICA), nonnegative matrix
factorization (NMF), nonnegative tensor factorization (NTF), and
deep neural network (DNN), the book addresses how they have evolved
to deal with multichannel and single-channel source separation.
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