Towards automated artificial evolution for computer-generated images

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Reference

Baluja, S., Pomerleau, D., Jochem, T.: Towards automated artificial evolution for computer-generated images. Connection Science 6, 325–354 (1994)

DOI

http://dx.doi.org/10.1080/09540099408915729

Abstract

In 1991, Karl Sims presented work on artificial evolution in which he used genetic algorithms to evolve complex structures for use in computer-generated images and animations. The evolution of the computer-generated images progressed from simple, randomly generated shapes to interesting images which the users created interactively. The evolution advanced under the constant guidance and supervision of the user. This paper describes attempts to automate the process of image evolution through the use of artificial neural networks. The central objective of this study is to learn the user's preferences, and to apply this knowledge to evolve aesthetically pleasing images which are similar to those evolved through interactive sessions with the user. This paper presents a detailed performance analysis of both the successes and shortcomings encountered in the use of five artificial neural network architectures. Further possibilities for improving the performance of a fully automated system are also discussed.

Extended Abstract

Bibtex

Used References

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Baluja, S., Pomerleau, D.A. & Jochem, T. (1993) Simulating a User’s Preferences: Towards Automated Artificial Evolution for Computer Generated Images. CMU-CS-93-198, School of Computer Science, Camegie Mellon University, 1993.

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Links

Full Text

https://www.ri.cmu.edu/pub_files/pub3/baluja_shumeet_1994_1/baluja_shumeet_1994_1.pdf

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