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Latent Variable Analysis and Signal Separation - 14th International Conference, LVA/ICA 2018, Guildford, UK, July 2-5, 2018, Proceedings (Paperback, 1st ed. 2018)
Yannick Deville, Sharon Gannot, Russell Mason, Mark D. Plumbley, Dominic Ward
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R1,631
Discovery Miles 16 310
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This book constitutes the proceedings of the 14th International
Conference on Latent Variable Analysis and Signal Separation,
LVA/ICA 2018, held in Guildford, UK, in July 2018.The 52 full
papers were carefully reviewed and selected from 62 initial
submissions. As research topics the papers encompass a wide range
of general mixtures of latent variables models but also theories
and tools drawn from a great variety of disciplines such as
structured tensor decompositions and applications; matrix and
tensor factorizations; ICA methods; nonlinear mixtures; audio data
and methods; signal separation evaluation campaign; deep learning
and data-driven methods; advances in phase retrieval and
applications; sparsity-related methods; and biomedical data and
methods.
This book provides a detailed survey of the methods that were
recently developed to handle advanced versions of the blind source
separation problem, which involve several types of nonlinear
mixtures. Another attractive feature of the book is that it is
based on a coherent framework. More precisely, the authors first
present a general procedure for developing blind source separation
methods. Then, all reported methods are defined with respect to
this procedure. This allows the reader not only to more easily
follow the description of each method but also to see how these
methods relate to one another. The coherence of this book also
results from the fact that the same notations are used throughout
the chapters for the quantities (source signals and so on) that are
used in various methods. Finally, among the quite varied types of
processing methods that are presented in this book, a significant
part of this description is dedicated to methods based on
artificial neural networks, especially recurrent ones, which are
currently of high interest to the data analysis and machine
learning community in general, beyond the more specific signal
processing and blind source separation communities.
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