The aim of the project was to develop a new Artificial Intelligence-based method to aid
modeling of musical instruments and sound design. Despite significant advances in music
technology, sound design and synthesis of complex musical instruments is still time
consuming, error prone and requires expert understanding of the instrument attributes
and significant expertise to produce high quality synthesised sounds to meet the needs
of musicians and musical instrument builders. Artificial Intelligence (Al) offers an effective
means of capturing this expertise and for handling the imprecision and uncertainty
inherent in audio knowledge and data.
This thesis presents new techniques to capture and exploit audio expertise, following
extended knowledge elicitation with two renowned music technologist/audio experts, developed
and embodied into an intelligent audio system. The Al combined with perceptual
auditory modeling ba.sed techniques (ITU-R BS 1387) make a generic modeling framework
providing a robust methodology for sound synthesis parameters optimisation with
objective prediction of sound synthesis quality. The evaluation, carried out using typical
pipe organ sounds, has shown that the intelligent audio system can automatically design
sounds judged by the experts to be of very good quality, while significantly reducing the
expert's work-load by up to a factor of three and need for extensive subjective tests.
This research work, the first initiative to capture explicitly knowledge from audio
experts for sound design, represents an important contribution for future design of electronic
musical instruments based on perceptual sound quality will help to develop a new
sound quality index for benchmarking sound synthesis techniques and serve as a research
framework for modeling of a wide range of musical instruments.
Date of Award | 2005 |
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Original language | English |
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Awarding Institution | |
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Supervisor | Emmanuel Ifeachor (Director of Studies (First Supervisor)) & Judy Edworthy (Other Supervisor) |
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ARTIFICIAL INTELLIGENCE-BASED APPROACH TO MODELLING OF PIPE ORGANS
Hamadicharef, B. (Author). 2005
Student thesis: PhD