Study on Digital Image Evolution of Artwork by Using Bio-Inspired Approaches

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Abstract

Whether for optimizing the speed of microprocessors or for sequence analysis in molecular biology—evolutionary algorithms are used in astoundingly many fields. Also the art was influenced by evolutionary algorithms—with principles of natural evolution works of art can be created or imitated, whereby initially generated art is put through an iterated process of selection and modification. This paper covers an application in which given images are emulated evolutionary using a finite number of semi-transparent overlapping polygons, which also became known under the name “Evolution of Mona Lisa”. In this context, different approaches to solve the problem are tested and presented here. In particular, we want to investigate whether Hill Climbing Algorithm in combination with Delaunay Triangulation and Canny Edge Detector that extracts the initial population directly from the original image performs better than the conventional Hill Climbing and Genetic Algorithm, where the initial population is generated randomly.

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Garbaruk, J., Logofătu, D., Bădică, C., & Leon, F. (2020). Study on Digital Image Evolution of Artwork by Using Bio-Inspired Approaches. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 12033 LNAI, pp. 261–270). Springer. https://doi.org/10.1007/978-3-030-41964-6_23

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