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BWSNet: Automatic Perceptual Assessment of Audio Signals

5 September 2023
Clément Le Moine Veillon
Victor Rosi
Pablo Arias Sarah
Léane Salais
Nicolas Obin
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Abstract

This paper introduces BWSNet, a model that can be trained from raw human judgements obtained through a Best-Worst scaling (BWS) experiment. It maps sound samples into an embedded space that represents the perception of a studied attribute. To this end, we propose a set of cost functions and constraints, interpreting trial-wise ordinal relations as distance comparisons in a metric learning task. We tested our proposal on data from two BWS studies investigating the perception of speech social attitudes and timbral qualities. For both datasets, our results show that the structure of the latent space is faithful to human judgements.

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