Abstract

Procedurally generated images and textures have been widely explored in evolutionary art. One active research direction in the field is the discovery of suitable heuristics for measuring perceived characteristics of evolved images. This is important in order to help influence the nature of evolved images and thereby evolve more meaningful and pleasing art. In this regard, particular challenges exist for quantifying aspects of style and shape. In an attempt to bridge the divide between computer vision and cognitive perception, we propose the use of measures related to image spatial frequencies. Based on existing research that uses power spectral density of spatial frequencies as an effective metric for image classification and retrieval, we posit that Fourier decomposition can be effective for guiding image evolution. We refine fitness measures based on Fourier analysis and spatial frequency and apply them within a genetic programming environment for image synthesis. We implement fitness strategies using 2D Fourier power spectra and phase, with the goal of evolving images that share spectral properties of supplied target images. Adaptations and extensions of the fitness strategies are considered for their utility in art systems. Experiments were conducted using a variety of greyscale and colour target images, spatial fitness criteria, and procedural texture languages. Results were promising, in that some target images were trivially evolved, while others were more challenging to characterize. We also observed that some evolved images which we found discordant and “uncomfortable” show a previously identified spectral phenomenon. Future research should further investigate this result, as it could extend the use of 2D power spectra in fitness evaluations to promote new aesthetic properties.

Highlights

  • With spatial frequency being one of the more human-intuitive measures for shape and composition, and with the amount of existing research linking the measure to human perception, this paper shows its potential as a tool for guiding evolutionary textures

  • Our goal is to explore the use of these measures in evolutionary texture synthesis and evaluate their utility in production of digital evolutionary art

  • We explore the use of these measures for colour image synthesis

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Summary

Introduction

We find numerous motivations toward the exploration of power spectral density as an art fitness measure, and promise in modelling perceptual spatial characteristics. With spatial frequency being one of the more human-intuitive measures for shape and composition, and with the amount of existing research linking the measure to human perception, this paper shows its potential as a tool for guiding evolutionary textures. Our goal is to explore the use of these measures in evolutionary texture synthesis and evaluate their utility in production of digital evolutionary art. We produce grayscale textures and explore the ability of Fourier-based fitness measures to replicate spatial properties of target images. Further details of this research are in [26]

Background
Literature Review
System Design
Objectives
More Advanced Artistic Explorations
Language and Representation
Findings
Conclusion
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