Bones, OC
ORCID: https://orcid.org/0000-0002-1608-3459, Cox, TJ
ORCID: https://orcid.org/0000-0002-4075-7564 and Davies, WJ
ORCID: https://orcid.org/0000-0002-5835-7489
2017,
An evidence-based soundscape taxonomy
, in: 24th International Congress on Sound and Vibration ICSV24, 23-27 July 2017, London, UK.
Access Information: Proceedings of the 24th International Congress on Sound and Vibration (ICSV24) published by IIAV, reproduced by permission. This document is for informational or personal use only.
Abstract
In an attempt to cultivate standardization in soundscape reporting Brown, Kang and Gjestland offered
an influential schema by which the acoustic environment is divided initially into indoor and outdoor environments, and within each into further categories; urban, rural, wilderness, and underwater. Within each of these, sounds are categorised with increasing levels of detail. However, this schema is offered as an organizational framework for further elaboration, rather than as an evidence-based account of semantic categories. In other soundscape categorisation research semantic differential data are used to examine how perceptually similar sounds are. However, this approach typically involves prescribing descriptive terms, taken from previous research or simply prescribed by the researcher, rather than eliciting descriptive terms and semantic categories per se. Another common method for identifying semantic categories is to perform multidimensional scaling and cluster analysis of similarity data generated by a pairwise comparison task. This approach avoids prescribing attributes with which to rate sounds; however the absence of semantic labelling in the task means that interpretation of the data is necessarily subjective, and the amount of time required to perform pairwise comparisons on a large number of sounds is potentially prohibitive. Here we present an evidence-based account of semantic categories of sounds commonly described in the soundscape literature, using a robust method based upon perceptual data generated by an online sorting and category-labelling task. This method is relatively quick to perform and elicits rather than prescribes categories and descriptive terms.
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