hzwer/ICCV2019-LearningToPaint
ICCV2019 - Learning to Paint With Model-based Deep Reinforcement Learning
This project helps artists and creative professionals automatically transform any image into a stylized painting using a minimal number of brushstrokes. You provide an input image, and it generates a painted version, determining optimal stroke positions and colors. This is for digital artists, illustrators, or anyone looking to creatively reinterpret photographs.
2,297 stars. No commits in the last 6 months.
Use this if you want to convert photographs or digital images into artistic paintings with a distinct, stylized brushstroke effect.
Not ideal if you need fine-grained, manual control over every brushstroke or precise replication of a specific painting style.
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Python
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MIT
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Last pushed
May 07, 2025
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