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Deep and Shallow

Machine Learning in Music and Audio

Shlomo Dubnov Ross Greer

$231

Hardback

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English
Chapman & Hall/CRC
08 December 2023
Providing an essential and unique bridge between the theories of signal processing, machine learning, and artificial intelligence (AI) in music, this book provides a holistic overview of foundational ideas in music, from the physical and mathematical properties of sound to symbolic representations. Combining signals and language models in one place, this book explores how sound may be represented and manipulated by computer systems, and how our devices may come to recognize particular sonic patterns as musically meaningful or creative through the lens of information theory.

Introducing popular fundamental ideas in AI at a comfortable pace, more complex discussions around implementations and implications in musical creativity are gradually incorporated as the book progresses. Each chapter is accompanied by guided programming activities designed to familiarize readers with practical implications of discussed theory, without the frustrations of free-form coding.

Surveying state-of-the art methods in applications of deep neural networks to audio and sound computing, as well as offering a research perspective that suggests future challenges in music and AI research, this book appeals to both students of AI and music, as well as industry professionals in the fields of machine learning, music, and AI.
By:   ,
Imprint:   Chapman & Hall/CRC
Country of Publication:   United Kingdom
Dimensions:   Height: 234mm,  Width: 156mm, 
Weight:   1.390kg
ISBN:   9781032146188
ISBN 10:   1032146184
Series:   Chapman & Hall/CRC Machine Learning & Pattern Recognition
Pages:   328
Publication Date:  
Audience:   General/trade ,  College/higher education ,  Professional and scholarly ,  ELT Advanced ,  Primary
Format:   Hardback
Publisher's Status:   Active
Preface Chapter 1 Introduction to Sounds of Music Chapter 2 Noise: the Hidden Dynamics of Music Chapter 3 Communicating Musical Information Chapter 4 Understanding and (Re)Creating Sound Chapter 5 Generating and Listening to Audio Information Chapter 6 Artificial Musical Brains Chapter 7 Representing Voices in Pitch and Time Chapter 8 Noise Revisited: Brains that Imagine Chapter 9 Paying (Musical) Attention Chapter 10 Last Noisy Thoughts, Summary and Conclusion Appendix A Introduction to Neural Network Frameworks: Keras, Tensorflow, Pytorch Appendix B Summary of Programming Examples and Exercises Appendix C Software Packages for Music and Audio Representation and Analysis Appendix D Free Music and Audio Editting Software Appendix E Datasets Appendix F Figure Attributions References Index

Shlomo Dubnov is a Professor in the Music Department and Affiliate Professor in Computer Science and Engineering at the University of California, San Diego. He is best known for his research on poly-spectral analysis of musical timbre and inventing the method of Music Information Dynamics with applications in Computer Audition and Machine improvisation. His previous books on The Structure of Style: Algorithmic Approaches to Understanding Manner and Meaning and Cross-Cultural Multimedia Computing: Semantic and Aesthetic Modeling were published by Springer. Ross Greer is a PhD Candidate in Electrical & Computer Engineering at the University of California, San Diego, where he conducts research at the intersection of artificial intelligence and human agent interaction. Beyond exploring technological approaches to musical expression, Ross creates music as a conductor and orchestrator for instrumental ensembles. Ross received his B.S. and B.A. degrees in EECS, Engineering Physics, and Music from UC Berkeley, and an M.S. in Electrical & Computer Engineering from UC San Diego.

Reviews for Deep and Shallow: Machine Learning in Music and Audio

"“Deep and Shallow by Shlomo Dubnov and Ross Greer is an exceptional journey into the convergence of music, artificial intelligence, and signal processing. Seamlessly weaving together intricate theories with practical programming activities, the book guides readers, whether novices or experts, towards a profound understanding of how AI can reshape musical creativity. A true gem for both enthusiasts and professionals, this book eloquently bridges the gap between foundational concepts of music information dynamics as an underlying basis for understanding music structure and listening experience, and cutting-edge applications, ushering us into the future of music and AI with clarity and excitement.” Gil Weinberg, Professor and Founding Director, Georgia Tech Center for Music Technology ""The authors make an enormous contribution, not only as a textbook, but as essential reading on music information dynamics, bridging multiple disciplines of music, information theory and machine learning. The theory is illustrated and grounded in plenty of practical information and resources."" Roger B. Dannenberg, Emeritus Professor of Computer Science, Art & Music, Carnegie Mellon University"


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