New Techniques for Inferring L-Systems Using Genetic Algorithm
December 01, 2017 Β· Declared Dead Β· π International Conference on Bioinspired Optimization Methods and Their Applications
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Authors
Jason Bernard, Ian McQuillan
arXiv ID
1712.00180
Category
cs.AI: Artificial Intelligence
Citations
10
Venue
International Conference on Bioinspired Optimization Methods and Their Applications
Last Checked
4 months ago
Abstract
Lindenmayer systems (L-systems) are a formal grammar system that iteratively rewrites all symbols of a string, in parallel. When visualized with a graphical interpretation, the images have self-similar shapes that appear frequently in nature, and they have been particularly successful as a concise, reusable technique for simulating plants. The L-system inference problem is to find an L-system to simulate a given plant. This is currently done mainly by experts, but this process is limited by the availability of experts, the complexity that may be solved by humans, and time. This paper introduces the Plant Model Inference Tool (PMIT) that infers deterministic context-free L-systems from an initial sequence of strings generated by the system using a genetic algorithm. PMIT is able to infer more complex systems than existing approaches. Indeed, while existing approaches are limited to L-systems with a total sum of 20 combined symbols in the productions, PMIT can infer almost all L-systems tested where the total sum is 140 symbols. This was validated using a test bed of 28 previously developed L-system models, in addition to models created artificially by bootstrapping larger models.
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