gif-sticker-maker

Convert photos (people, pets, objects, logos) into 4 animated GIF stickers with captions. Use when: user wants to create cartoon stickers, GIF expressions, emoji packs, animated avatars, or convert photos to Funko Pop / Pop Mart blind box style animations. Triggers: sticker, GIF, cartoon, emoji, expression pack, avatar animation.

Safety Notice

This listing is from the official public ClawHub registry. Review SKILL.md and referenced scripts before running.

Copy this and send it to your AI assistant to learn

Install skill "gif-sticker-maker" with this command: npx skills add minimax-gif-sticker

GIF Sticker Maker

Convert user photos into 4 animated GIF stickers (Funko Pop / Pop Mart style).

Style Spec

  • Funko Pop / Pop Mart blind box 3D figurine
  • C4D / Octane rendering quality
  • White background, soft studio lighting
  • Caption: black text + white outline, bottom of image

Prerequisites

Before starting any generation step, ensure:

  1. Python venv is activated with dependencies from requirements.txt installed
  2. MINIMAX_API_KEY is exported (e.g. export MINIMAX_API_KEY='your-key')
  3. ffmpeg is available on PATH (for Step 3 GIF conversion)

If any prerequisite is missing, set it up first. Do NOT proceed to generation without all three.

Workflow

Step 0: Collect Captions

Ask user (in their language):

"Would you like to customize the captions for your stickers, or use the defaults?"

  • Custom: Collect 4 short captions (1–3 words). Actions auto-match caption meaning.
  • Default: Look up captions table by detected user language. Never mix languages.

Step 1: Generate 4 Static Sticker Images

Tool: scripts/minimax_image.py

  1. Analyze the user's photo — identify subject type (person / animal / object / logo).
  2. For each of the 4 stickers, build a prompt from image-prompt-template.txt by filling {action} and {caption}.
  3. If subject is a person: pass --subject-ref <user_photo_path> so the generated figurine preserves the person's actual facial likeness.
  4. Generate (all 4 are independent — run concurrently):
python3 scripts/minimax_image.py "<prompt>" -o output/sticker_hi.png --ratio 1:1 --subject-ref <photo>
python3 scripts/minimax_image.py "<prompt>" -o output/sticker_laugh.png --ratio 1:1 --subject-ref <photo>
python3 scripts/minimax_image.py "<prompt>" -o output/sticker_cry.png --ratio 1:1 --subject-ref <photo>
python3 scripts/minimax_image.py "<prompt>" -o output/sticker_love.png --ratio 1:1 --subject-ref <photo>

--subject-ref only works for person subjects (API limitation: type=character). For animals/objects/logos, omit the flag and rely on text description.

Step 2: Animate Each Image → Video

Tool: scripts/minimax_video.py with --image flag (image-to-video mode)

For each sticker image, build a prompt from video-prompt-template.txt, then:

python3 scripts/minimax_video.py "<prompt>" --image output/sticker_hi.png -o output/sticker_hi.mp4
python3 scripts/minimax_video.py "<prompt>" --image output/sticker_laugh.png -o output/sticker_laugh.mp4
python3 scripts/minimax_video.py "<prompt>" --image output/sticker_cry.png -o output/sticker_cry.mp4
python3 scripts/minimax_video.py "<prompt>" --image output/sticker_love.png -o output/sticker_love.mp4

All 4 calls are independent — run concurrently.

Step 3: Convert Videos → GIF

Tool: scripts/convert_mp4_to_gif.py

python3 scripts/convert_mp4_to_gif.py output/sticker_hi.mp4 output/sticker_laugh.mp4 output/sticker_cry.mp4 output/sticker_love.mp4

Outputs GIF files alongside each MP4 (e.g. sticker_hi.gif).

Step 4: Deliver

Output format (strict order):

  1. Brief status line (e.g. "4 stickers created:")
  2. <deliver_assets> block with all GIF files
  3. NO text after deliver_assets
<deliver_assets>
<item><path>output/sticker_hi.gif</path></item>
<item><path>output/sticker_laugh.gif</path></item>
<item><path>output/sticker_cry.gif</path></item>
<item><path>output/sticker_love.gif</path></item>
</deliver_assets>

Default Actions

#ActionFilename IDAnimation
1Happy wavinghiWave hand, slight head tilt
2Laughing hardlaughShake with laughter, eyes squint
3Crying tearscryTears stream, body trembles
4Heart gestureloveHeart hands, eyes sparkle

See references/captions.md for multilingual caption defaults.

Rules

  • Detect user's language, all outputs follow it
  • Captions MUST come from captions.md matching user's language column — never mix languages
  • All image prompts must be in English regardless of user language (only caption text is localized)
  • <deliver_assets> must be LAST in response, no text after

Source Transparency

This detail page is rendered from real SKILL.md content. Trust labels are metadata-based hints, not a safety guarantee.

Related Skills

Related by shared tags or category signals.

Research

MiniMax Vision Analysis

Analyze, describe, and extract information from images using the MiniMax vision MCP tool. Use when: user shares an image file path or URL (any message contai...

Registry SourceRecently Updated
2960Profile unavailable
Coding

MiniMax iOS Dev

iOS application development guide covering UIKit, SnapKit, and SwiftUI. Includes touch targets, safe areas, navigation patterns, Dynamic Type, Dark Mode, acc...

Registry SourceRecently Updated
1320Profile unavailable
Coding

MiniMax Flutter Dev

Flutter cross-platform development guide covering widget patterns, Riverpod/Bloc state management, GoRouter navigation, performance optimization, and platfor...

Registry SourceRecently Updated
1830Profile unavailable
Coding

MiniMax Android Dev

Android native application development and UI design guide. Covers Material Design 3, Kotlin/Compose development, project configuration, accessibility, and b...

Registry SourceRecently Updated
1270Profile unavailable