Modelling Cadence Perception Via Musical Parameter Tuning to Perceptual Data - Artificial Intelligence Applications and Innovations Access content directly
Conference Papers Year : 2016

Modelling Cadence Perception Via Musical Parameter Tuning to Perceptual Data

Asterios Zacharakis
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Costas Tsougras
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Emilios Cambouropoulos
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Abstract

Conceptual blending when used as a creative tool combines the features of two input spaces, generating new blended spaces that share the common structure of the inputs, as well as different combinations of their non-common parts. In the case of music, conceptual blending has been employed creatively, among others, in generating new cadences (pairs of chords that conclude musical phrases). Given a specific set of input cadences together with their blends, this paper addresses the following question: are some musical features of cadences more salient than others in defining perceived relations between input and blended cadences? To this end, behavioural data from a pairwise dissimilarity listening test using input and blended cadences as stimuli were collected, thus allowing the construction of a ‘ground-truth’ human-based perceptual space of cadences. Afterwards, the salience of each cadence feature was adjusted through the Differential Evolution (DE) algorithm, providing a system-perceived space of cadences that optimally matched the ground-truth space. Results in a specific example of cadence blending indicated that some features were distinguishably more salient than others. This pilot study was a first step towards building self-aware blending systems and revealed that the salience of features in conceptual blending is an essential part for producing perceptually relevant blends.
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hal-01557595 , version 1 (06-07-2017)

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Maximos Kaliakatsos-Papakostas, Asterios Zacharakis, Costas Tsougras, Emilios Cambouropoulos. Modelling Cadence Perception Via Musical Parameter Tuning to Perceptual Data. 12th IFIP International Conference on Artificial Intelligence Applications and Innovations (AIAI), Sep 2016, Thessaloniki, Greece. pp.552-561, ⟨10.1007/978-3-319-44944-9_49⟩. ⟨hal-01557595⟩
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