Self-Relevance Predicts the Aesthetic Appeal of Real and Synthetic Artworks Generated via Neural Style Transfer

Author:

Vessel Edward A.1ORCID,Pasqualette Laura2,Uran Cem34,Koldehoff Sarah1,Bignardi Giacomo56,Vinck Martin34

Affiliation:

1. Department of Neuroscience, Max Planck Institute for Empirical Aesthetics

2. Neurocognitive Developmental Psychology, Friedrich-Alexander University Erlangen-Nürnberg

3. Ernst Strüngmann Institute

4. Department of Neurophysics, Donders Centre for Neuroscience

5. Department of Language and Genetics, Max Planck Institute for Psycholinguistics

6. Max Planck School of Cognition

Abstract

What determines the aesthetic appeal of artworks? Recent work suggests that aesthetic appeal can, to some extent, be predicted from a visual artwork’s image features. Yet a large fraction of variance in aesthetic ratings remains unexplained and may relate to individual preferences. We hypothesized that an artwork’s aesthetic appeal depends strongly on self-relevance. In a first study ( N = 33 adults, online replication N = 208), rated aesthetic appeal for real artworks was positively predicted by rated self-relevance. In a second experiment ( N = 45 online), we created synthetic, self-relevant artworks using deep neural networks that transferred the style of existing artworks to photographs. Style transfer was applied to self-relevant photographs selected to reflect participant-specific attributes such as autobiographical memories. Self-relevant, synthetic artworks were rated as more aesthetically appealing than matched control images, at a level similar to human-made artworks. Thus, self-relevance is a key determinant of aesthetic appeal, independent of artistic skill and image features.

Funder

Max-Planck-Gesellschaft

european research council

bundesministerium für bildung und forschung

Publisher

SAGE Publications

Subject

General Psychology

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