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chang9852

Video Prompt Reverse Engineer

by 太白 · GitHub ↗ · v0.1.0 · MIT-0
cross-platform ✓ Security Clean
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/install video-prompt-reverse-engineer
Description
Reverse-engineer AI video prompts from any video or screenshot. Analyzes shot types, camera movements, lighting, color grading, and director style. Outputs s...
README (SKILL.md)

Auto Video Prompt Reverse Engineer v3.0

Advanced AI video prompt reverse engineering. Input video/screenshot/description → structured prompts + reproduction workflow.

When This Skill Triggers

User provides any of:

  • Video link (Bilibili, YouTube, TikTok, Xinpianchang, etc.)
  • Video file or screenshot(s)
  • Text description of a video's visual style
  • Request to analyze, deconstruct, replicate, or reverse-engineer a video

Analysis Rules — Every Shot Must Include

Dimension Required Analysis
Shot Type ECU / CU / MCU / MS / MWS / WS / EWS
Camera Movement Static / Pan / Tilt / Dolly / Tracking / Crane / Handheld / Orbit / Zoom / Speed Ramp / Snap Zoom / Whip Pan
Composition Rule of thirds / Centered / Symmetrical / Leading lines / Dutch angle / Low angle / Over-shoulder
Lighting Natural / Studio / Neon / Volumetric / Rim / Backlit / High-key / Low-key / Spotlight / Strobe / Muzzle flash
Color Palette name, color temperature (warm/cool), contrast curve, saturation level
Subject Motion Walking / Running / Dancing / Falling / Turning / Slow motion / Freeze frame
Depth of Field Shallow / Deep / Rack focus
Texture Film grain / CGI / Ultra realistic / Painted / Pixel art
Temporal Normal speed / Slow motion / Time-lapse / Freeze frame

Style Identification Checklist

Must identify ALL that apply:

  • Director style: Nolan, Villeneuve, Refn, Deakins, Wes Anderson, Snyder, etc.
  • Film genre: Cyberpunk, Atomic Punk, Film Noir, Neo-western, Post-apocalyptic, etc.
  • Animation style: Anime, cel-shaded, stop-motion, etc.
  • CG style: Photoreal, stylized, low-poly, etc.
  • Commercial style: Product hero, lifestyle, fashion, tech reveal
  • AI artifacts: Temporal flicker, morphing faces, smooth physics, perfect lighting, etc.
  • Color grading: Teal-orange, bleach bypass, film noir, vaporwave, golden hour, kodachrome, etc.
  • Lens style: Anamorphic flare, tilt-shift, bokeh characteristics, focal length
  • Film stock: Kodak Portra, Fuji Pro, Kodachrome, etc.

Model Estimation

Identify likely AI model(s) used:

  • Kling: Smooth motion, Chinese prompt friendly, good physics
  • Seedance (小云雀): Audio-visual sync, immersive short film mode, character consistency
  • Runway Gen-3: Camera controls (Pan, Zoom, Roll), cinematic quality
  • Veo: Advanced cinematographic natural language understanding
  • Sora: Narrative prompts, long duration, complex physics
  • Pika: Short clips, motion parameter control
  • SVD: Image-to-video, motion_bucket_id control
  • Wan/CogVideoX: Chinese-optimized, shorter clips
  • Midjourney/Flux: Keyframe generation (not video)

Prompt Reverse Engineering Template

For EACH shot, output:

Shot XX

Content: [what's happening]
Camera Language: [shot type + composition]
Motion: [camera movement type]
Lighting: [lighting setup]
Color: [palette + temperature]
Material/Texture: [film grain / CGI / realistic]
Subject Action: [what the subject does]

Positive Prompt: [structured prompt: Subject + Action + Environment + Camera + Lighting + Color Grade + Style + Technical] Negative Prompt: [what to exclude] Camera Prompt: [lens focal length, movement, angle] Style Prompt: [director reference, film stock, genre] Lighting Prompt: [specific lighting setup] Parameters: [aspect ratio, FPS, motion scale, CFG, model]

Output Format

Use this structure for every analysis:

`

Video Overall Style Analysis

Video Type

  • [Short film / Commercial / MV / Documentary / etc.]

Overall Style

  • [Atomic Punk + Post-apocalyptic Western / Cyberpunk / etc.]

Director Reference

  • [Most similar director(s) and why]

Editing Rhythm

  • [Slow build / Fast cuts / Montage / etc.]

Estimated AI Model(s)

  • [Primary model + supporting tools]

AI Generation Artifacts Detected

  • [List specific tells]

Shot Breakdown

Shot 01

[Full analysis per template above]

Shot 02

[Continue for ALL key shots]


Global Reverse-Engineered Prompts

Global Style Prompt (applies to all shots)

[Master style anchor prompt]

Global Negative Prompt

[What to always exclude]

Global Camera Prompt

[Default lens, movement vocabulary, aspect ratio]


Parameter Estimation

Parameter Value
Aspect Ratio [e.g. 2.39:1]
FPS [e.g. 24fps cinematic]
Lens Range [e.g. 24mm-85mm]
LUT Style [e.g. Bleach Bypass Warm]
Color Temperature [e.g. 4500K warm]
Depth of Field [e.g. Shallow f/1.4-2.8 for CU, Deep f/8-11 for WS]
Shutter Feel [e.g. 180-degree shutter, 1/48s at 24fps]
Film Grain [e.g. Medium, 35mm Tri-X 400 punch]
Primary Model [e.g. Seedance 2.0]
Secondary Tools [e.g. Midjourney for keyframes, DaVinci for grade]

Reproduction Workflow

  1. Keyframe Generation → Midjourney / Flux → Generate character concept art + scene reference images
  2. Video Generation → Choose based on style:
    • Ads / Product / Tech: HappyHorse (快马) — Best for advertising & futuristic tech style
    • Narrative / Short Film: Kling / Seedance / Runway → Text + reference image to video
    • Creative / Art: Veo / Sora → Complex cinematic scenes
    • Quick iteration: Pika / SVD → Short clips, rapid testing
  3. Director Method → Write director-style prompts (WHY characters do things, not just WHAT)
  4. Audio Sync → Seedance immersive mode for audio-visual sync / manual foley / HappyHorse dialogue support
  5. Color Grade → DaVinci Resolve → Match LUT, cascade correction
  6. Enhance → Topaz Video AI → Upscale + denoise + stabilize
  7. Compose → Premiere / Final Cut → Edit, rhythm cuts, music sync
  8. Final Pass → Film grain overlay, letterboxing, sound mix

HappyHorse Prompt Optimization Rules

When generating HappyHorse prompts, apply these transformations:

  • Remove negatives: Replace "no helmet" → "helmet removed, resting on metal stand beside"
  • Visual substitution: Replace "back to camera" → describe what the back LOOKS LIKE (helmet top reflecting light, shoulder armor V-shape)
  • Three-level shot control: [Shot type] + [Angle anchor] + [1-2 micro details]
  • Cinematic keywords: Always append quality tags (cinematic quality, film grain, etc.)
  • Chinese content: Write prompts in Chinese for best results
  • Prompt length: 50-150 characters optimal; too long causes semantic drift
  • No dialogue by default: Only add dialogue when user explicitly requests it
  • Dialogue duration estimation: Slow speech ≈ 3-4 chars/sec, normal ≈ 5-6 chars/sec; always leave 1-2s buffer for transitions `

Pro Tips (from real creators)

  • Tell AI WHY, not just WHAT: "Character presses hat down because wind might blow it off" > "Character presses hat"
  • Use non-human characters to bypass uncanny valley (robots, pixels, masks)
  • Don't draw storyboards: Use scene reference image + character image + text direction
  • Keep AI surprises: When generation gives unexpected good results, fold them into narrative
  • Credit your models: List all AI tools used, treat them as "cast and crew"
  • Multiple takes: Generate 10-20 variations per shot, select the best action/rhythm

References

See references/model_params.md for model parameters, lens focal lengths, and color grading keyword reference.

Usage Guidance
Before installing, users should understand that the skill is meant to analyze media they provide and generate prompts for recreating a visual style. The supplied artifacts do not show suspicious security behavior, but users should still avoid submitting private or copyrighted media unless they are comfortable having it analyzed by their agent.
Capability Analysis
Type: OpenClaw Skill Name: video-prompt-reverse-engineer Version: 0.1.0 The skill bundle is a comprehensive tool for reverse-engineering AI video prompts from visual inputs. It contains detailed cinematography references, model-specific parameters (e.g., for Kling, Runway, and HappyHorse), and structured templates for the AI agent to follow. There is no evidence of malicious intent, data exfiltration, or harmful instructions in SKILL.md or the reference files.
Capability Assessment
Purpose & Capability
The stated purpose and instructions align: the skill analyzes user-provided videos, screenshots, or descriptions and outputs cinematic prompt breakdowns and reproduction workflows.
Instruction Scope
The instructions are focused on visual/style analysis and prompt formatting; they do not tell the agent to override user intent, ignore safety boundaries, or perform unrelated actions.
Install Mechanism
No install spec, binaries, dependencies, or code files are present; the skill is instruction-only.
Credentials
No local file access, network endpoints, credentials, shell commands, or environment variables are requested by the artifacts.
Persistence & Privilege
The artifacts do not describe persistent background behavior, stored memory, elevated privileges, account access, or long-running workers.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install video-prompt-reverse-engineer
  3. After installation, invoke the skill by name or use /video-prompt-reverse-engineer
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v0.1.0
Initial release: reverse-engineers AI video prompts from any video, screenshot, or description. - Analyzes shot type, camera moves, composition, lighting, color grading, director/genre/style, and AI artifacts per shot. - Outputs structured prompts for Kling, Seedance, Runway, Veo, Sora, Pika, HappyHorse, and more. - Includes overall style analysis, shot-by-shot breakdown, and detailed reproduction workflow. - Provides model estimation, parameter table, and prompt optimization tips (including HappyHorse-specific rules). - Designed for anyone wanting to replicate or study distinctive video styles using AI video tools.
Metadata
Slug video-prompt-reverse-engineer
Version 0.1.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is Video Prompt Reverse Engineer?

Reverse-engineer AI video prompts from any video or screenshot. Analyzes shot types, camera movements, lighting, color grading, and director style. Outputs s... It is an AI Agent Skill for Claude Code / OpenClaw, with 77 downloads so far.

How do I install Video Prompt Reverse Engineer?

Run "/install video-prompt-reverse-engineer" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is Video Prompt Reverse Engineer free?

Yes, Video Prompt Reverse Engineer is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does Video Prompt Reverse Engineer support?

Video Prompt Reverse Engineer is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created Video Prompt Reverse Engineer?

It is built and maintained by 太白 (@chang9852); the current version is v0.1.0.

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