
Photorealistic Autumn Kimono Portrait
Generates a highly realistic portrait of a woman in a kimono set against a vibrant, bokeh-rich autumn background.
This is a gpt-image-2 prompt case for 人像角色. Use the copy-ready prompt below to generate similar visuals, and review YouMind OpenLab awesome-gpt-image-2 attribution plus commercial-use rights before reuse.
Prompt
Copy-ready prompt
One{argument name="photography style" default="Realistic portraits with shallow depth of field and soft bokeh effect"} The protagonist is{argument name="subject" default="Young Japanese women"} He was turning back to look at the camera, his face showing {argument name="expression" default="A gentle smile"} She was wearing{argument name="attire" default="Light beige kimono with orange maple leaf pattern"} A gold belt cinched her waist. Her long, dark hair was styled in an elegant updo, with a few strands falling beside her cheeks, and she wore delicate pearl earrings. (Background setting: [omitted]){argument name="setting" default="A garden ablaze with red leaves in autumn"} The upper left corner is adorned with vibrant red leaves, and the background is deeply blurred, creating a tranquil and cinematic atmosphere.Prompt variables
Editable argument placeholders found in the prompt, with their default values.
More cases in this category
Prioritized by category, input mode compatibility, quality, and lower risk.






Reuse and source notes
Use this prompt safely after previewing the case.
- 1.Copy the prompt or open it directly in Dovoo with the generation button.
- 2.Adjust variables, aspect ratio, and reference images for your own use case.
- 3.Before publishing or paid usage, verify source rights, attribution requirements, and brand or likeness risks.
Can I use this prompt commercially?
Commercial-use status is unknown. Review the original source, license, brand constraints, and legal requirements before paid usage.
Where does this case come from?
This case is imported from YouMind OpenLab awesome-gpt-image-2; keep attribution visible and check the source URL before reuse.