自我关联预测通过神经风格传递产生的真实和合成艺术作品的审美吸引力。

IF 4.8 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Psychological Science Pub Date : 2023-09-01 Epub Date: 2023-08-14 DOI:10.1177/09567976231188107
Edward A Vessel, Laura Pasqualette, Cem Uran, Sarah Koldehoff, Giacomo Bignardi, Martin Vinck
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引用次数: 2

摘要

是什么决定了艺术品的审美吸引力?最近的研究表明,审美吸引力在某种程度上可以从视觉艺术品的图像特征中预测出来。然而,审美评分的很大一部分差异仍然无法解释,可能与个人偏好有关。我们假设一件艺术品的审美吸引力在很大程度上取决于自我关联。在第一项研究中(N=33名成年人,在线复制N=208),真实艺术品的审美吸引力通过自我相关性评级得到了积极预测。在第二个实验中(N=45在线),我们使用深度神经网络将现有艺术品的风格转化为照片,创造了合成的、自我相关的艺术品。风格转移被应用于选择的自我相关照片,以反映参与者的特定属性,如自传体记忆。自我相关的合成艺术品被评为比匹配的对照图像更具美感,与人造艺术品的水平相似。因此,自我关联是审美吸引力的关键决定因素,独立于艺术技巧和图像特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-Relevance Predicts the Aesthetic Appeal of Real and Synthetic Artworks Generated via Neural Style Transfer.

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.

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来源期刊
Psychological Science
Psychological Science PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
13.30
自引率
0.00%
发文量
156
期刊介绍: Psychological Science, the flagship journal of The Association for Psychological Science (previously the American Psychological Society), is a leading publication in the field with a citation ranking/impact factor among the top ten worldwide. It publishes authoritative articles covering various domains of psychological science, including brain and behavior, clinical science, cognition, learning and memory, social psychology, and developmental psychology. In addition to full-length articles, the journal features summaries of new research developments and discussions on psychological issues in government and public affairs. "Psychological Science" is published twelve times annually.
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