Automatic Synthesizer Preset Generation with PresetGen
Artikel i vetenskaplig tidskrift, 2016

We refer the task of finding preset(s) (i.e. set(s) of synthesizer parameters) that approximates a target sound best, as the preset generation problem. PresetGen addresses this problem regarding the real world synthesizer, OP-1. The OP-1 consists of several synthesis blocks, and it is not fully deterministic. We propose and evaluate a solution to preset generation using a multi-objective Non-dominated Sorting-Genetic-Algorithm-II. PresetGen handles the full problem complexity and returns a small set of presets that approximate the target sound best by covering the Pareto front of this multi-objective optimization problem. Moreover, we present an empirical evaluation experiment that compares the performance of three human sound designers to that of PresetGen. The results show that PresetGen is human-competitive.

musical instruments

machine learning

audio analysis

sound synthesis

Författare

Kivanc Tatar

Simon Fraser University

Matthieu Macret

Simon Fraser University

Philippe Pasquier

Simon Fraser University

Journal of New Music Research

0929-8215 (ISSN)

Vol. 45 2 124-1414

Ämneskategorier (SSIF 2011)

Medieteknik

DOI

10.1080/09298215.2016.1175481

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Senast uppdaterat

2025-05-07