
Close up portrait of woman in champagne gown with brown hair - AI Image Prompt
Generates close up portrait of woman in champagne gown with brown hair with high-end garment detail, runway-quality lighting, and fashion-forward compositional confidence. Ideal for Grok, Flux, ChatGPT, Gemini, Z-Image and other models that can handle natural language prompts.
Prompt
A close-up portrait of a woman with long brown hair styled in an elegant updo with loose tendrils framing her face. Subject: A beautiful woman with fair skin and dark brown eyes looking directly at the camera with a soft, confident smile. Her makeup features defined eyeliner and glossy pink lips. Clothing: She wears a sheer, champagne-colored halter-neck gown adorned with sparkling silver sequins and crystals along the neckline and bodice. Lighting: Soft, warm studio lighting illuminates her face and shoulders from the front, creating a gentle glow on her skin while leaving the background in deep shadow. Camera: A tight medium close-up shot focusing on the upper torso and head, with a shallow depth of field that blurs the dark background completely. Style Details: High-resolution photography with a polished, glamorous aesthetic typical of red carpet event coverage.
Tags
Brown HairBrunetteFair SkinFemaleFormal WearMedium ShotPortrait ShotRealisticStudio
How to use
Generate a new image
- Copy the prompt and paste it into your preferred image model.
- Adjust details like subject, lighting, or style if needed.
- Generate and iterate to refine the result.
- Works best with models that support detailed natural language prompts, such as Gemini, Grok, ChatGPT, Flux, or Z-Image.
Edit your uploaded image
- Upload your image in a model like Gemini, Grok or ChatGPT.
- Paste the edit prompt into the text box and submit.
- Review the result, most edit prompts work out of the box.
- If needed, tweak the prompt and repeat until you get the desired output.
- Note: In our testing, Gemini and Grok tend to give better results for edits.
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