baoyu-cover-image
Cover Image Generator
Generate hand-drawn style cover images for articles with multiple style options.
Usage
# From markdown file (auto-select style based on content)
/baoyu-cover-image path/to/article.md
# Specify a style
/baoyu-cover-image path/to/article.md --style blueprint
/baoyu-cover-image path/to/article.md --style warm
/baoyu-cover-image path/to/article.md --style dark-atmospheric
# Without title text
/baoyu-cover-image path/to/article.md --no-title
# Combine options
/baoyu-cover-image path/to/article.md --style minimal --no-title
# From direct text input
/baoyu-cover-image
[paste content or describe the topic]
# Direct input with style
/baoyu-cover-image --style playful
[paste content]
Options
| Option | Description |
|---|---|
--style <name> |
Specify cover style (see Style Gallery below) |
--aspect <ratio> |
Aspect ratio: 2.35:1 (cinematic, default), 16:9 (widescreen), 1:1 (social) |
--lang <code> |
Output language for title text (en, zh, ja, etc.) |
--no-title |
Generate cover without title text (visual only) |
Style Gallery
| Style | Description |
|---|---|
elegant (Default) |
Refined, sophisticated, understated |
flat-doodle |
Bold outlines, pastel colors, cute rounded shapes |
blueprint |
Technical schematics, engineering precision |
bold-editorial |
Magazine cover impact, dramatic typography |
chalkboard |
Black chalkboard, colorful chalk drawings |
dark-atmospheric |
Cinematic dark mode, glowing accents |
editorial-infographic |
Magazine explainer, visual storytelling |
fantasy-animation |
Ghibli/Disney inspired, whimsical charm |
intuition-machine |
Technical briefing, bilingual labels |
minimal |
Ultra-clean, zen-like, focused |
nature |
Organic, calm, earthy |
notion |
Clean SaaS dashboard, productivity styling |
pixel-art |
Retro 8-bit, nostalgic gaming aesthetic |
playful |
Fun, creative, whimsical |
retro |
Halftone dots, vintage badges, classic |
sketch-notes |
Hand-drawn, educational, warm |
vector-illustration |
Flat vector, black outlines, retro colors |
vintage |
Aged paper, historical, expedition style |
warm |
Friendly, approachable, human-centered |
watercolor |
Soft hand-painted, natural warmth |
Detailed style definitions: references/styles/<style>.md
Auto Style Selection
When no --style is specified, the system analyzes content to select the best style:
| Content Signals | Selected Style |
|---|---|
| Architecture, system design, engineering | blueprint |
| Product launch, keynote, marketing, brand | bold-editorial |
| Education, classroom, tutorial, teaching | chalkboard |
| Entertainment, creative, premium, cinematic | dark-atmospheric |
| Technology explainer, science, research | editorial-infographic |
| Storytelling, children, fantasy, magical | fantasy-animation |
| Technical docs, academic, bilingual | intuition-machine |
| Personal story, emotion, growth, life | warm |
| Simple, zen, focus, essential | minimal |
| Fun, easy, beginner, casual | playful |
| Nature, eco, wellness, health, organic | nature |
| Pop culture, 80s/90s nostalgia, badges | retro |
| Product, SaaS, dashboard, productivity | notion |
| Productivity, workflow, app, tools, cute | flat-doodle |
| Gaming, retro tech, developer, 8-bit | pixel-art |
| Educational, tutorial, knowledge sharing | sketch-notes |
| Creative proposals, brand, toy-like | vector-illustration |
| History, exploration, heritage, biography | vintage |
| Lifestyle, travel, food, personal | watercolor |
| Business, professional, strategy, analysis | elegant |
File Management
Output Directory
Each session creates an independent directory named by content slug:
cover-image/{topic-slug}/
├── source-{slug}.{ext} # Source files (text, images, etc.)
├── prompts/
│ └── cover.md
└── cover.png
Slug Generation:
- Extract main topic from content (2-4 words, kebab-case)
- Example: "The Future of AI" →
future-of-ai
Conflict Resolution
If cover-image/{topic-slug}/ already exists:
- Append timestamp:
{topic-slug}-YYYYMMDD-HHMMSS - Example:
ai-futureexists →ai-future-20260118-143052
Source Files
Copy all sources with naming source-{slug}.{ext}:
source-article.md(main text content)source-logo.png(image from conversation)
Multiple sources supported: text, images, files from conversation.
Workflow
Step 1: Analyze Content
-
Save source content (if not already a file):
- If user provides a file path: use as-is
- If user pastes content: save to
source.mdin target directory
-
Extract key information:
- Main topic: What is the article about?
- Core message: What's the key takeaway?
- Tone: Serious, playful, inspiring, educational?
- Keywords: Identify style-signaling words
-
Language detection:
- Detect source language from content
- Detect user language from conversation context
- Note if source_language ≠ user_language (will ask in Step 3)
Step 2: Determine Options
-
Style selection:
- If
--stylespecified, use that style - Otherwise, scan content for style signals and auto-select 3 candidates
- Default to
elegantif no clear signals
- If
-
Aspect ratio:
- If
--aspectspecified, use that ratio - Otherwise, prepare options: 2.35:1 (cinematic), 16:9 (widescreen), 1:1 (social)
- If
Step 3: Confirm Options
Purpose: Let user confirm all options in a single step before generation.
IMPORTANT: Present ALL options in a single confirmation step using AskUserQuestion. Do NOT interrupt workflow with multiple separate confirmations.
Determine which questions to ask:
| Question | When to Ask |
|---|---|
| Style | Always (required) |
| Aspect ratio | Always (offer common options) |
| Language | Only if source_language ≠ user_language |
Present options (use AskUserQuestion with all applicable questions):
Question 1 (Style) - always:
- Style A (recommended): [style name] - [brief description]
- Style B: [style name] - [brief description]
- Style C: [style name] - [brief description]
- Custom: Provide custom style reference
Question 2 (Aspect) - always:
- 2.35:1 Cinematic (Recommended) - ultra-wide, dramatic
- 16:9 Widescreen - standard video/presentation
- 1:1 Square - social media optimized
Question 3 (Language) - only if source ≠ user language:
- [Source language] (matches content)
- [User language] (your preference)
Language handling:
- If source language = user language: Just inform user (e.g., "Title will be in Chinese")
- If different: Ask which language to use for title text
Step 4: Generate Cover Concept
Create a cover image concept based on selected style:
Title (if included, max 8 characters):
- Distill the core message into a punchy headline
- Use hooks: numbers, questions, contrasts, pain points
- Skip if
--no-titleflag is used
Visual Elements:
- Style-appropriate imagery and icons
- 1-2 symbolic elements representing the topic
- Metaphors or analogies that fit the style
Step 5: Create Prompt File
Save prompt to prompts/cover.md with confirmed options.
All prompts are written in the user's confirmed language preference.
Prompt Format:
Cover theme: [topic in 2-3 words]
Style: [selected style name]
Aspect ratio: [confirmed aspect ratio]
[If title included:]
Title text: [8 characters or less, in confirmed language]
Subtitle: [optional, in confirmed language]
Visual composition:
- Main visual: [description matching style]
- Layout: [positioning based on title inclusion and aspect ratio]
- Decorative elements: [style-appropriate elements]
Color scheme:
- Primary: [style primary color]
- Background: [style background color]
- Accent: [style accent color]
Style notes: [specific style characteristics to emphasize]
[If no title:]
Note: No title text, pure visual illustration only.
Step 6: Generate Image
Image Generation Skill Selection:
- Check available image generation skills
- If multiple skills available, ask user to choose
Generation: Call selected image generation skill with prompt file, output path, and confirmed aspect ratio.
Step 7: Output Summary
Cover Image Generated!
Topic: [topic]
Style: [style name]
Aspect: [aspect ratio]
Title: [cover title] (or "No title - visual only")
Language: [confirmed language]
Location: [output path]
Preview the image to verify it matches your expectations.
Notes
- Cover should be instantly understandable at small preview sizes
- Title (if included) must be readable and impactful
- Visual metaphors work better than literal representations
- Maintain style consistency throughout the cover
- Image generation typically takes 10-30 seconds
- Title text uses user's confirmed language preference
- Aspect ratio: 2.35:1 for cinematic/dramatic, 16:9 for widescreen, 1:1 for social media
Extension Support
Custom styles and configurations via EXTEND.md.
Check paths (priority order):
.baoyu-skills/baoyu-cover-image/EXTEND.md(project)~/.baoyu-skills/baoyu-cover-image/EXTEND.md(user)
If found, load before Step 1. Extension content overrides defaults.
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