Aesthetic Visual Quality Assessment of Paintings

This paper aims to evaluate the aesthetic visual quality of a special type of visual media: digital images of paintings. Assessing the aesthetic visual quality of paintings can be considered a highly subjective task. However, to some extent, certain paintings are believed, by consensus, to have high...

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Veröffentlicht in:IEEE journal of selected topics in signal processing 2009-04, Vol.3 (2), p.236-252
Hauptverfasser: Li, Congcong, Chen, Tsuhan
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description This paper aims to evaluate the aesthetic visual quality of a special type of visual media: digital images of paintings. Assessing the aesthetic visual quality of paintings can be considered a highly subjective task. However, to some extent, certain paintings are believed, by consensus, to have higher aesthetic quality than others. In this paper, we treat this challenge as a machine learning problem, in order to evaluate the aesthetic quality of paintings based on their visual content. We design a group of methods to extract features to represent both the global characteristics and local characteristics of a painting. Inspiration for these features comes from our prior knowledge in art and a questionnaire survey we conducted to study factors that affect human's judgments. We collect painting images and ask human subjects to score them. These paintings are then used for both training and testing in our experiments. Experimental results show that the proposed work can classify high-quality and low-quality paintings with performance comparable to humans. This work provides a machine learning scheme for the research of exploring the relationship between aesthetic perceptions of human and the computational visual features extracted from paintings.
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subjects Aesthetics
Bridges
Classification
Computer vision
Digital images
Feature extraction
Human
Humans
Image coding
Machine learning
Perception
Quality assessment
Studies
Tasks
Visual
visual quality assessment
title Aesthetic Visual Quality Assessment of Paintings
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