Abstract
With the advancement of neural generative capabilities, the art community has actively embraced GenAI (generative artificial intelligence) for creating painterly content. Large text-to-image models can quickly generate aesthetically pleasing outcomes. However, the process can be non-deterministic and often involves tedious trial-and-error, as users struggle with formulating effective prompts to achieve their desired results. This paper introduces a prompting-free generative approach that empowers users to automatically generate personalized painterly content that incorporates their aesthetic preferences in a customized artistic style. This approach involves utilizing ``semantic injection'' to customize an artist model in a specific artistic style, and further leveraging a genetic algorithm to optimize the prompt generation process through real-time iterative human feedback. By solely relying on the user's aesthetic evaluation and preference for the artist model-generated images, this approach creates the user a personalized model that encompasses their aesthetic preferences and the customized artistic style.
| Original language | English |
|---|---|
| Pages | 1-9 |
| Number of pages | 9 |
| DOIs | |
| Publication status | E-pub ahead of print - 9 Feb 2024 |
| Externally published | Yes |
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Steering Large Text-to-Image Model for Kandinsky Synthesis Through Preference-Based Prompt Optimization
Zhou, A.-L., Wu, W., Wang, Y.-A. & Zhang, K., 20 Apr 2025, Artificial Intelligence in Music, Sound, Art and Design (EvoMUSART 2025): International Conference on Computational Intelligence in Music, Sound, Art and Design (Part of EvoStar) . Springer, p. 417-433 17 p.Research output: Chapter in Book or Report/Conference proceeding › Chapter › peer-review
Open Access1 Citation (Scopus) -
Kandinsky as You Preferred
Zhou, A.-L., Wang, Y.-A., Wu, W. & Zhang, K., 25 Jul 2024, SIGGRAPH '24: ACM SIGGRAPH 2024 Posters. Association for Computing Machinery (ACM), p. 1-2 2 p. 15Research output: Chapter in Book or Report/Conference proceeding › Conference Proceeding › peer-review
Open Access2 Citations (Scopus)
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