Digital Signal Processing with Kernel Methods Digital Signal Processing with Kernel Methods

Digital Signal Processing with Kernel Methods

    • £104.99
    • £104.99

Publisher Description

A realistic and comprehensive review of joint approaches to machine learning and signal processing algorithms, with application to communications, multimedia, and biomedical engineering systems

Digital Signal Processing with Kernel Methods reviews the milestones in the mixing of classical digital signal processing models and advanced kernel machines statistical learning tools. It explains the fundamental concepts from both fields of machine learning and signal processing so that readers can quickly get up to speed in order to begin developing the concepts and application software in their own research.

Digital Signal Processing with Kernel Methods provides a comprehensive overview of kernel methods in signal processing, without restriction to any application field. It also offers example applications and detailed benchmarking experiments with real and synthetic datasets throughout. Readers can find further worked examples with Matlab source code on a website developed by the authors: http://github.com/DSPKM

• Presents the necessary basic ideas from both digital signal processing and machine learning concepts
• Reviews the state-of-the-art in SVM algorithms for classification and detection problems in the context of signal processing
• Surveys advances in kernel signal processing beyond SVM algorithms to present other highly relevant kernel methods for digital signal processing

An excellent book for signal processing researchers and practitioners, Digital Signal Processing with Kernel Methods will also appeal to those involved in machine learning and pattern recognition.

GENRE
Professional & Technical
RELEASED
2017
27 December
LANGUAGE
EN
English
LENGTH
672
Pages
PUBLISHER
Wiley
SIZE
47.4
MB

More Books Like This

Data-Driven Science and Engineering Data-Driven Science and Engineering
2019
Computational Intelligence and Its Applications Computational Intelligence and Its Applications
2012
Kernel Methods and Machine Learning Kernel Methods and Machine Learning
2014
Machine Learning and Pattern Recognition Methods in Chemistry from Multivariate and Data Driven Modeling Machine Learning and Pattern Recognition Methods in Chemistry from Multivariate and Data Driven Modeling
2022
Machine Learning Machine Learning
2008
Robust Recognition via Information Theoretic Learning Robust Recognition via Information Theoretic Learning
2014