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Deep Learning Techniques for Music G...
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Hadjeres, Gaëtan.
Deep Learning Techniques for Music Generation
紀錄類型:
書目-語言資料,印刷品 : Monograph/item
正題名/作者:
Deep Learning Techniques for Music Generation/ by Jean-Pierre Briot, Gaëtan Hadjeres, François-David Pachet.
作者:
Briot, Jean-Pierre.
其他作者:
Pachet, François-David.
面頁冊數:
XXVIII, 284 p. 143 illus., 91 illus. in color.online resource. :
Contained By:
Springer Nature eBook
標題:
Mathematics in Music. -
電子資源:
https://doi.org/10.1007/978-3-319-70163-9
ISBN:
9783319701639
Deep Learning Techniques for Music Generation
Briot, Jean-Pierre.
Deep Learning Techniques for Music Generation
[electronic resource] /by Jean-Pierre Briot, Gaëtan Hadjeres, François-David Pachet. - 1st ed. 2020. - XXVIII, 284 p. 143 illus., 91 illus. in color.online resource. - Computational Synthesis and Creative Systems,2509-6575. - Computational Synthesis and Creative Systems,.
Introduction -- Method -- Objective -- Representation -- Architecture -- Challenge and Strategy -- Analysis -- Discussion and Conclusion.
This book is a survey and analysis of how deep learning can be used to generate musical content. The authors offer a comprehensive presentation of the foundations of deep learning techniques for music generation. They also develop a conceptual framework used to classify and analyze various types of architecture, encoding models, generation strategies, and ways to control the generation. The five dimensions of this framework are: objective (the kind of musical content to be generated, e.g., melody, accompaniment); representation (the musical elements to be considered and how to encode them, e.g., chord, silence, piano roll, one-hot encoding); architecture (the structure organizing neurons, their connexions, and the flow of their activations, e.g., feedforward, recurrent, variational autoencoder); challenge (the desired properties and issues, e.g., variability, incrementality, adaptability); and strategy (the way to model and control the process of generation, e.g., single-step feedforward, iterative feedforward, decoder feedforward, sampling). To illustrate the possible design decisions and to allow comparison and correlation analysis they analyze and classify more than 40 systems, and they discuss important open challenges such as interactivity, originality, and structure. The authors have extensive knowledge and experience in all related research, technical, performance, and business aspects. The book is suitable for students, practitioners, and researchers in the artificial intelligence, machine learning, and music creation domains. The reader does not require any prior knowledge about artificial neural networks, deep learning, or computer music. The text is fully supported with a comprehensive table of acronyms, bibliography, glossary, and index, and supplementary material is available from the authors' website.
ISBN: 9783319701639
Standard No.: 10.1007/978-3-319-70163-9doiSubjects--Topical Terms:
885668
Mathematics in Music.
LC Class. No.: Q334-342
Dewey Class. No.: 006.3
Deep Learning Techniques for Music Generation
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