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Experimental Animation

Environment Design Using Chatgpt (about prompt and language)

Originally, we use Chinese for environment generation. But during experiment, there appear to be some inaccuracy. I wonder if it has somthing to do with language.

After research, it appears language will affact the model to some extent.

Language and Prompting in Image Generation

  • Language can influence image results.
    Even if two prompts have the same meaning, different languages may lead to slightly different styles, details, or levels of accuracy.
  • English style keywords are often more stable.
    Many image models respond well to common English visual terms such as painterly brushstrokes, hand-painted texture, low saturation, and dusty atmosphere.
  • Chinese is still very useful.
    Chinese can express mood, intention, and subtle creative ideas clearly, especially if the user is more comfortable writing in Chinese.
  • Direct translation is not always enough.
    A word like “笔触感” can mean brushstroke texture, painterly texture, or rough brushwork, and each may produce a different result.
  • A mixed-language workflow works best.
    The user can first describe the idea in Chinese, then refine the prompt with specific English visual keywords.
  • Overall, prompting is about clarification.
    The goal is not just to translate, but to turn creative ideas into clear visual instructions that the model can follow.

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