What Are Danbooru Tags and How to Use Them
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What Are Danbooru Tags
Danbooru tags are a structured tagging system used to describe image content. They originate from the Danbooru image database and are widely used in AI image generation models (especially anime-based models like Illustrious, Anima, etc.).
Each tag represents a specific visual element:
- Character (e.g. hatsune_miku)
- Appearance (e.g. long_hair, blue_eyes)
- Clothing (e.g. school_uniform)
- Pose or action (e.g. looking_at_viewer, smile)
- Environment (e.g. outdoors, night)
- Style or quality (e.g. masterpiece, best_quality)
The goal is precision. Every tag adds information the model can interpret.
Why Danbooru Tags Matter
AI models trained on Danbooru-style datasets understand these tags very well.
Using correct tags:
- Improves accuracy of generated images
- Reduces randomness
- Gives you control over composition, style, and details
Using natural language instead (like full sentences) is less reliable for these models.
How Danbooru Tags Are Written
Danbooru tags follow strict formatting rules:
1. Lowercase only
✔ correct: blue_eyes
✘ wrong: Blue Eyes
2. Underscores instead of spaces
✔ long_hair
✘ long hair
3. Comma-separated list 1girl, long_hair, blue_eyes, smile
4. No unnecessary words
✔ 1girl
✘ a girl / one girl
Tags are keywords, not sentences.
Basic Tag Structure (Order Matters)
A solid prompt usually follows this structure:
1. Subject 1girl, 1boy
2. Character (optional) hatsune_miku
3. Appearance long_hair, blue_eyes, blush
4. Expression / Emotion smile, shy, serious
5. Pose / Action looking_at_viewer, sitting, walking
6. Clothing school_uniform, dress
7. Environment outdoors, night, city
8. Lighting / Atmosphere soft_lighting, glowing, depth_of_field
9. Quality Tags (optional) masterpiece, best_quality
Example Prompt (Correct Danbooru Style) 1girl, long_hair, black_hair, grey_eyes, blush, shy, looking_at_viewer, school_uniform, outdoors, cherry_blossoms, soft_lighting, depth_of_field, masterpiece, best_quality
How to Find Correct Tags
Use real Danbooru sources:
- Danbooru website
- Model training datasets
- Existing prompts from Civitai or similar platforms
Important: Not every word is a valid tag. If a tag doesn’t exist in Danbooru-style datasets, the model may ignore it.
Common Mistakes Beginners Make
-
Writing full sentences ✘ a girl with long hair standing outside
✔ 1girl, long_hair, outdoors -
Mixing styles ✘ photorealistic + anime tags together (can confuse model)
-
Using invalid tags ✘ pretty_face (not always a real tag) ✔ detailed_face (valid in many models)
-
Overloading prompts Too many tags can reduce clarity. More is not always better.
Tips for Better Results
- Start simple → then add details
- Use real, known tags
- Group tags logically (subject → details → environment)
- Test and adjust (prompting is iterative)
Quick Beginner Template Use this as a base: 1girl, [hair], [eyes], [expression], [pose], [clothes], [environment], [lighting], masterpiece, best_quality
Example: 1girl, longblackhair, greyeyes, shy, lookingatviewer, schooluniform, outdoors, softlighting, masterpiece, bestquality
Key Takeaway Danbooru tagging is not about writing — it’s about describing images in structured keywords. If your tags are:
- Correct
- Clean
- Logical → your results will be significantly better.


