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Publication

Machine listening for park soundscape quality assessment

Journal Contribution - Journal Article

The increasing importance attributed to soundscape quality in urban design generates a need for a system for automatic quality assessment that could be used for example in monitoring. In this work, the possibility for using machine listening techniques for this purpose is explored. The outlined approach detects the presence of particular sounds in a human-inspired way, and therefore allows to draw conclusions about how soundscapes are perceived. The system proposed in this paper consists of a partly recurrent artificial neural network modified to incorporate human attention mechanisms. The network is trained on sounds recorded in typical urban parks in the city of Antwerp, and thus becomes an auditory object creation and classification system particularly tuned to this context. The system is used to analyze a continuous sound level recording in different parks, resulting in a prediction of sounds that will most likely be noticed by a park visitor. Finally, it is shown that these indicators for noticed sounds allow to construct more powerful models for soundscape quality as reported in a survey with park visitors than indicators that are more regularly used in soundscape research.
Journal: ACTA ACUSTICA UNITED WITH ACUSTICA
ISSN: 1861-9959
Issue: 1
Volume: 104
Pages: 121 - 130
Publication year:2018
BOF-keylabel:yes
IOF-keylabel:yes
CSS-citation score:1
Authors:National
Authors from:Higher Education
Accessibility:Open