Genetic Programming for Non-Photorealistic Rendering
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @MastersThesis{Brock_Baniasadi_Maryam_2013,
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author = "Maryam Baniasadi",
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title = "Genetic Programming for Non-Photorealistic Rendering",
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school = "Department of Computer Science, Brock University",
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year = "2013",
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address = "St. Catharines, Ontario, Canada L2S 3A1",
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month = mar,
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keywords = "genetic algorithms, genetic programming",
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URL = "http://hdl.handle.net/10464/4304",
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URL = "https://dr.library.brocku.ca/handle/10464/4304",
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URL = "https://dr.library.brocku.ca/bitstream/handle/10464/4304/Brock_Baniasadi_Maryam_2013.pdf",
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URL = "http://www.cosc.brocku.ca/archive/sites/all/files/downloads/research/cs1308.pdf",
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size = "193 pages",
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abstract = "This thesis focuses on developing an evolutionary art
system using genetic programming. The main goal is to
produce new forms of evolutionary art that filter
existing images into new non-photorealistic (NPR)
styles, by obtaining images that look like traditional
media such as watercolor or pencil, as well as brand
new effects. The approach permits GP to generate
creative forms of NPR results. The GP language is
extended with different techniques and methods inspired
from NPR research such as colour mixing expressions,
image processing filters and painting algorithm. Colour
mixing is a major new contribution, as it enables many
familiar and innovative NPR effects to arise. Another
major innovation is that many GP functions process the
canvas (rendered image), while is dynamically changing.
Automatic fitness scoring uses aesthetic evaluation
models and statistical analysis, and multi-objective
fitness evaluation is used. Results showed a variety of
NPR effects, as well as new, creative possibilities.",
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notes = "Also available as Technical Report # CS-13-08",
- }
Genetic Programming entries for
Maryam Baniasadi
Citations