Color Theme Evaluation through User Preference Modeling

Author:

Yang Bailin1ORCID,Wei Tianxiang2ORCID,Li Frederick W. B.3ORCID,Liang Xiaohui4ORCID,Deng Zhigang5ORCID,Fang Yili1ORCID

Affiliation:

1. Zhejiang Gongshang University, Hangzhou, China

2. Tianjin University, Tianjin, China

3. University of Durham, Durham, United Kingdom

4. Beihang University, Beijing, China

5. University of Houston, Houston, TX, USA

Abstract

Color composition (or color theme) is a key factor to determine how well a piece of art work or graphical design is perceived by humans. Despite a few color harmony models have been proposed, their results are often less satisfactory since they mostly neglect the variations of aesthetic cognition among individuals and treat the influence of all ratings equally as if they were all rated by the same anonymous user. To overcome this issue, in this article we propose a new color theme evaluation model by combining a back propagation neural network and a kernel probabilistic model to infer both the color theme rating and the user aesthetic preference. Our experiment results show that our model can predict more accurate and personalized color theme ratings than state of the art methods. Our work is also the first-of-its-kind effort to quantitatively evaluate the correlation between user aesthetic preferences and color harmonies of five-color themes, and study such a relation for users with different aesthetic cognition.

Funder

NSFC of China

Zhejiang Provincial Natural Science Foundation of China

Publisher

Association for Computing Machinery (ACM)

Reference72 articles.

1. Adobe COLOR CC. 2019. Retrieved from https://color.adobe.com/

2. COLORLOVERS. 2019. Retrieved from http://www.colourlovers.com/

3. Colormind. 2019. Retrieved from http://colormind.io/

4. Kernel estimation of cumulative distribution function of a random variable with bounded support;Baszczynska A.;Statistics in Transition New,2016

5. SenticNet 6: Ensemble Application of Symbolic and Subsymbolic AI for Sentiment Analysis

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