AI Art Neural Constellation: Revealing the Collective and Contrastive State of AI-Generated and Human Art
Faizan Farooq Khan, Diana Kim, Divyansh Jha, Youssef Mohamed, Hanna H, Chang, Ahmed Elgammal, Luba Elliott, Mohamed Elhoseiny

TL;DR
This paper presents a comprehensive analysis of AI-generated art compared to human art, using a large dataset and neural network analysis to reveal similarities, differences, and emotional responses, establishing a new analytical framework.
Contribution
It introduces the ArtNeuralConstellation framework, combining neural analysis and human surveys to contrast AI and human art, with extensive dataset and novel insights.
Findings
AI art relates to modern art principles from 1800-2000
AI art is ID with human art in landscapes and geometric figures
AI art often features incomplete and reduced figuration
Abstract
Discovering the creative potentials of a random signal to various artistic expressions in aesthetic and conceptual richness is a ground for the recent success of generative machine learning as a way of art creation. To understand the new artistic medium better, we conduct a comprehensive analysis to position AI-generated art within the context of human art heritage. Our comparative analysis is based on an extensive dataset, dubbed ``ArtConstellation,'' consisting of annotations about art principles, likability, and emotions for 6,000 WikiArt and 3,200 AI-generated artworks. After training various state-of-the-art generative models, art samples are produced and compared with WikiArt data on the last hidden layer of a deep-CNN trained for style classification. We actively examined the various art principles to interpret the neural representations and used them to drive the comparative…
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Taxonomy
TopicsAesthetic Perception and Analysis
MethodsContrastive Language-Image Pre-training
