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 familiarise 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.
General
Imprint: |
Taylor & Francis
|
Country of origin: |
United Kingdom |
Series: |
Chapman & Hall/CRC Machine Learning & Pattern Recognition |
Release date: |
November 2023 |
First published: |
2024 |
Authors: |
Shlomo Dubnov
• Ross Greer
|
Dimensions: |
234 x 156mm (L x W) |
Pages: |
320 |
ISBN-13: |
978-1-03-213391-1 |
Categories: |
Books
|
LSN: |
1-03-213391-0 |
Barcode: |
9781032133911 |
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