Archives of Acoustics, 46, 2, pp. 279–288, 2021
10.24425/aoa.2021.136582

Assessment of Audio-Visual Environmental Stimuli. Complementarity of Comfort and Discomfort Scales

Jan FELCYN
Adam Mickiewicz University
Poland

Anna PREIS
Adam Mickiewicz University
Poland

Marcin PRASZKOWSKI
Adam Mickiewicz University
Poland

Małgorzata WRZOSEK
Szczecin University
Poland

The aim of the study was to examine how the wording of a question about audio, visual and audiovisual stimuli can affect the assessment of the environment. The participants of the psychophysical experiments were asked to rate, on a numerical scale, audio and visual information both separately and together, combined into mixes. A set of questions was used for all the investigated audio, visual, and audio-visual stimuli. The participants were asked about the comfort or the discomfort caused by the perceived stimuli presented at three different sound levels.

The results show that there are no statistically significant differences between the assessment of comfort and discomfort associated with visual samples. Actually, the comfort and discomfort ratings are equivalent to the extent that a discomfort rating can be represented as the opposite to the comfort rating, i.e. the discomfort rating is equal to the 10 minus comfort rating.

In general, the results obtained for audio and audio-visual samples were the same, with only a few exceptions that were dependent on sound level. No statistically significant differences were found for the loudest stimuli, but there were some exceptions for the softener cases. Based on the results, we show that only for visual stimuli both scales are totally interchangeable. When presenting audio and audio-visual samples, only one scale should be applied – either discomfort or comfort, depending on the context and the character of the stimuli.
Keywords: audio-visual interaction; environment assessment; discomfort; comfort; environmental perception; environmental quality
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Copyright © The Author(s). This is an open-access article distributed under the terms of the Creative Commons Attribution-ShareAlike 4.0 International (CC BY-SA 4.0).

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DOI: 10.24425/aoa.2021.136582