Review of computational neuroaesthetics: bridging the gap between neuroaesthetics and computer science
November 16th, 2020
China
Rui Li, Junsong Zhang
This review article investigates computational approaches underlying modern neuroaesthetics research. Computational neuroaesthetics is the burgeoning field bridging the gap between computational aesthetics and neuroaesthetics, and this article looks at theoretical models, neuroimaging findings, and machine learning models that could serve as prospects in this novel field of study.
Brain Informatics
DOI: doi.org/10.1186/s40708-020-00118-w
Posted byMahmoud Said
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Abstract/Description
The mystery of aesthetics attracts scientists from various research fields. The topic of aesthetics, in combination with other disciplines such as neuroscience and computer science, has brought out the burgeoning fields of neuroaesthetics and computational aesthetics within less than two decades. Despite profound findings are carried out by experimental approaches in neuroaesthetics and by machine learning algorithms in computational neuroaesthetics, these two fields cannot be easily combined to benefit from each other and findings from each field are isolated. Computational neuroaesthetics, which inherits computational approaches from computational aesthetics and experimental approaches from neuroaesthetics, seems to be promising to bridge the gap between neuroaesthetics and computational aesthetics. Here, we review theoretical models and neuroimaging findings about brain activity in neuroaesthetics. Then machine learning algorithms and computational models in computational aesthetics are enumerated. Finally, we introduce studies in computational neuroaesthetics which combine computational models with neuroimaging data to analyze brain connectivity during aesthetic appreciation or give a prediction on aesthetic preference. This paper outlines the rich potential for computational neuroaesthetics to take advantages from both neuroaesthetics and computational aesthetics. We conclude by discussing some of the challenges and potential prospects in computational neuroaesthetics, and highlight issues for future consideration.
