🧪 Skills

Hitpaw Image Enhancer

--- name: hitpaw-image-enhancer description: Enhance images and videos using HitPaw's AI enhancement API version: "1.0.1" author: Nova (HitPaw-Official) type: cli entry: dist/cli.js repository: https:

v1.0.3
❤️ 0
⬇️ 142
👁 1
Share

Description


name: hitpaw-image-enhancer description: Enhance images and videos using HitPaw's AI enhancement API version: "1.0.1" author: Nova (HitPaw-Official) type: cli entry: dist/cli.js repository: https://github.com/HitPaw-Official/openclaw-skill-hitpaw-enhancer keywords:

  • image
  • video
  • enhancement
  • upscale
  • hitpaw
  • ai license: MIT capabilities:
  • image_enhancement
  • image_upscaling
  • photo_enhance
  • video_enhancement
  • video_upscaling requirements: node: ">=18" packages:
    • axios
    • commander
    • ora
    • chalk
    • fs-extra environment: variables:
    • name: HITPAW_API_KEY description: Your HitPaw API key required: true

HitPaw Image & Video Enhancer Skill

A powerful OpenClaw skill that integrates HitPaw's state-of-the-art AI enhancement technology for both images and videos. Enhance, upscale, restore, and denoise with multiple AI models.


🎯 Features

Based on the official HitPaw API Documentation, this skill leverages industrial-grade AI models developed in-house by HitPaw's expert R&D team.

Core Strengths

  • Quality: Industry-defining quality fit for professional use cases, from commercial photography to archival restoration
  • Fidelity: Preserves the original details and identities in the source images, ensuring the output remains true to the input
  • Efficiency: Optimized for low latency and high throughput, capable of processing distinct enhancement tasks at scale

📸 Image Enhancement

According to the Image API Introduction, our image processing services offer world-class capabilities designed to handle a wide variety of restoration scenarios:

Key Capabilities

  • Upscale: Output high-resolution images from low-resolution input files using standard or high-fidelity models
  • Face Recovery: Ensure high-quality facial details, offering both "Clear" (soft/beauty) and "Natural" (textured/realistic) restoration options
  • Sharpen & Denoise: Bring images into focus by removing blur and sensor noise while preserving the original structure
  • Generative Restoration: Leverage Diffusion technology to reconstruct details in severely degraded portraits or general images

Model Classes

The Image API offers two classes of AI models to suit different needs:

  • Standard Models: Fast and efficient, prioritizing preserving original fidelity and details. Recommended for most professional and general restoration use cases
  • Generative Models: Utilize Stable Diffusion to produce the highest quality outputs, capable of "imagining" missing details. Ideal for extremely low-quality inputs where traditional upscaling fails

Standard Models

As detailed in the Available Models documentation:

Model Multiplier Description Best For
general_2x / general_4x 2x / 4x General Enhance Model General photos, landscapes
face_2x / face_4x 2x / 4x Portrait Model (Clear) Soft/beauty style portrait enhancement
face_v2_2x / face_v2_4x 2x / 4x Portrait Model (Natural) Natural/realistic portrait enhancement
high_fidelity_2x / high_fidelity_4x 2x / 4x High Fidelity Model Professional photography, conservatively upscaling high-quality sources
sharpen_denoise_1x 1x Sharp Denoise Model Aggressive denoising with sharpening
detail_denoise_1x 1x Detail Denoise Model Gentle denoising with texture preservation

Generative Models

Powered by Stable Diffusion technology:

Model Multiplier Description Best For
generative_portrait_1x/2x/4x 1x/2x/4x Generative Portrait Model Extremely low-quality portraits, "re-imagines" details
generative_general_1x/2x/4x 1x/2x/4x Generative Enhance Model Heavily compressed or very low-resolution general images

Technical Highlights:

  • Generative models excel at texture generation and sharpening
  • They can fill in missing details that traditional upscalers cannot recover
  • Ideal for restoration tasks where source data is severely degraded

Example Image Use Cases

# General photo upscaling (landscape, architecture)
enhance-image -u landscape.jpg -m general_4x -o hd_landscape.jpg

# Portrait beautification (soft skin)
enhance-image -u selfie.jpg -m face_4x -o portrait_beautified.jpg

# Professional archival restoration (natural look)
enhance-image -u old_photo.png -m face_v2_2x -o restored.png --keep-exif

# Denoise grainy low-light photo
enhance-image -u night_photo.jpg -m sharpen_denoise_1x -o clean.jpg

# Generative reconstruction for severely degraded image
enhance-image -u blurry_face.jpg -m generative_portrait_2x -o ai_face.jpg

🎬 Video Enhancement

According to the Video API Introduction, our video processing services provide industrial-grade solutions for restoring and upscaling video content:

Key Capabilities

  • Video Upscale: Convert SD or HD footage to 4K Ultra HD clarity using deep convolution and feature learning technologies
  • Portrait Restoration: Specialized models to detect, stabilize, and enhance faces in video streams, removing motion blur and noise while maintaining identity
  • General Restoration: A comprehensive solution based on GAN technology to de-noise, de-blur, and enhance details in general video content
  • Generative Reconstruction: Utilizing Stable Diffusion for video to reconstruct textures and details in extremely low-quality footage

Core Pillars

  • Temporal Stability: Unlike image-only models, our video engines ensure smooth transitions between frames, eliminating flickering and jitter
  • Clarity: Recovering fine details and removing compression artifacts common in streaming or legacy media
  • Performance: Optimized inference times to handle heavy video processing workloads efficiently

Model Classes

  • Restoration & Upscale (Standard): Models like Ultra HD and General Restore focus on cleaning up the footage and increasing resolution without altering the fundamental content. They rely on pixel-perfect accuracy and temporal consistency
  • Generative Video: Uses advanced logic-based reconstruction. Designed for "impossible" restoration tasks where the source video lacks sufficient data, generating realistic textures and details to fill the gaps

Available Video Models

From the Video Models Documentation:

Model Description Use Case
ultrahd_restore_2x Ultra HD Model High-definition upscale; natural-looking 1080p→4K
general_restore_1x / 2x / 4x General Restore Model General video restoration, de-noising, de-blurring
portrait_restore_1x / 2x Portrait Restore Model Multi-face restoration with temporal stability
face_soft_2x Video Face Soft Model Facial beautification with consistent appearance
generative_1x Generative Video Model Extreme restoration of heavily degraded footage

Technical Highlights:

  • Generates realistic textures and eliminates flickering via multi-frame SD architecture
  • Handles heavy compression, high-ISO noise, and complex motion blur
  • Maintains identity consistency across frames

Example Video Use Cases

# Convert old 720p footage to 4K
enhance-video -u old_clip.mp4 -m ultrahd_restore_2x -r 3840x2160 -o 4k_remastered.mp4

# Restore grainy, noisy home video
enhance-video -u home_movie.avi -m general_restore_2x -r 1920x1080 -o cleaned.mp4

# Beautify faces in vlog/interview
enhance-video -u interview.mp4 -m face_soft_2x -r 1920x1080 -o soft_faces.mp4

# Stabilize and restore old family footage with multiple faces
enhance-video -u family_reunion.mov -m portrait_restore_2x -r 1920x1080 -o restored.mp4

# Generative AI restoration for severely degraded source
enhance-video -u heavily_compressed.mp4 -m generative_1x -r 1920x1080 -o regenerated.mp4

🚀 Why Choose HitPaw API?

Industry-Leading Quality: Professional-grade output suitable for commercial photography, archival restoration, and broadcast-quality video remastering

Unparalleled Fidelity: Strictly retains original details and subject identity, ensuring outputs remain true to inputs

Comprehensive Model Catalog: 16 specialized models covering virtually every restoration scenario

Scalable Performance: Optimized for low-latency, high-throughput workloads


📊 Quick Reference

Image Model Selection Guide

Scenario Recommended Model
General photo upscale general_2x or general_4x
Portrait beautification face_2x or face_4x
Portrait natural look face_v2_2x or face_v2_4x
Professional archival high_fidelity_2x / high_fidelity_4x
Grainy low-light sharpen_denoise_1x
Subtle denoise detail_denoise_1x
Severely degraded generative_portrait_* or generative_general_*

Video Model Selection Guide

Scenario Recommended Model
SD → 4K upscale ultrahd_restore_2x
General cleanup general_restore_2x
Interview/vlog beautification face_soft_2x
Old home movies (multiple faces) portrait_restore_2x
Severely compressed/ degraded generative_1x

Installation

clawhub install hitpaw-image-enhancer

Configuration

Set your HitPaw API key:

export HITPAW_API_KEY="your_api_key_here"

Or create a .env file in your OpenClaw workspace:

HITPAW_API_KEY=your_api_key_here

Get your API key at: https://playground.hitpaw.com/

Test the API directly in the browser: HitPaw Playground →


📸 Examples & Gallery

Note: Place actual before/after screenshots in the images/ folder. See images/README.md for guidelines.

Image Enhancement Examples

Scenario Before After
General Upscale (2x) Before After
Face Enhancement Before After
Generative Portrait Before After

Video Enhancement Examples

Scenario Original Frame Enhanced Frame
General Restoration Original Enhanced
Portrait Restoration Before After

IMAGE COMMAND

Usage: enhance-image

Command Line Options

Option Type Default Description
--url, -u string required URL of the image to enhance
--output, -o string output.jpg Output file path
--model, -m string general_2x Image model (see below)
--extension, -e string .jpg Output extension (.jpg, .png, .webp)
--dpi number original Target DPI for metadata
--keep-exif boolean false Preserve EXIF data from original
--poll-interval number 5 Polling interval in seconds
--timeout number 300 Maximum wait time in seconds

Available Image Models

Model Multiplier Best For DPI Support
general_2x / general_4x 2x / 4x General photos, landscapes
face_2x / face_4x 2x / 4x Portrait & face enhancement
face_v2_2x / face_v2_4x 2x / 4x Improved face model
high_fidelity_2x / high_fidelity_4x 2x / 4x High quality preservation
sharpen_denoise_1x 1x Denoise & sharpen
detail_denoise_1x 1x Detail preservation
generative_* (1x/2x/4x) AI generative fill

Examples

# Simple 2x upscale with general model
enhance-image -u photo.jpg -o enhanced.jpg -m general_2x

# Face enhancement 4x
enhance-image -u portrait.jpg -m face_4x -o portrait_4x.jpg --keep-exif

# High fidelity with custom DPI
enhance-image -u old-photo.png -m high_fidelity_2x -dpi 300 -o hd.png

# Batch processing
for img in *.jpg; do
  enhance-image -u "$img" -o "upscaled/$img" -m general_4x
done

VIDEO COMMAND

Usage: enhance-video

⚠️ Important Notes

  • Resolution is required (--resolution or -r). Must be in WIDTHxHEIGHT format (e.g., 1920x1080).
  • Ensure target resolution does not exceed max output resolution (36 MP total pixels) per API limits.
  • Video processing can take minutes to hours depending on length. Use --timeout to extend if needed.
  • Input video must be at a publicly accessible URL (local files not directly supported).

Command Line Options

Option Type Default Description
--url, -u string required URL of the video to enhance
--output, -o string output.mp4 Output file path
--model, -m string general_restore_2x Video model (see below)
--resolution, -r string required Target resolution in WxH (e.g., 1920x1080)
--original-resolution string Original resolution (e.g., 1280x720) - optional
--extension, -e string .mp4 Output extension (.mp4, .mov, .avi)
--fps number Target FPS (preserves original if omitted)
--keep-audio boolean true Preserve audio track
--poll-interval number 10 Polling interval in seconds
--timeout number 600 Maximum wait time in seconds

Available Video Models

Model Description Use Case
general_restore_1x / 2x / 4x General video restoration General upscaling
face_soft_2x Face-softening enhancement Portrait videos
portrait_restore_1x / 2x Portrait restoration Face-focused content
ultrahd_restore_2x Ultra HD upscaling Highest quality upscale
generative_1x Generative fill AI-powered restoration

Examples

# Upscale to 1080p using general_restore_2x
enhance-video -u input.mp4 -o output_1080p.mp4 -m general_restore_2x -r 1920x1080

# Upscale to 4K with specific original resolution
enhance-video -u clip.mov -o 4k.mov -m general_restore_4x -r 3840x2160 --original-resolution 1920x1080

# Denoise with portrait model
enhance-video -u portrait_video.avi -m portrait_restore_2x -r 1920x1080 -o clean_portrait.mp4

# Add color to B&W (if generative model supports)
enhance-video -u bw_vintage.mp4 -m generative_1x -r 1920x1080 -o colorized.mp4

Coin Consumption

Image Enhancement

  • 2x/4x models: ~75 coins per image
  • 1x models: ~50 coins per image
  • Generative models: ~100+ coins per image

Video Enhancement

Coin costs depend on video length, model, and resolution. Approximate rates:

  • Upscale models: ~200-400 coins per minute
  • Restoration models: ~150-300 coins per minute

Always check current rates at: https://playground.hitpaw.com/


Error Handling

Common errors and solutions:

Error Cause Fix
Invalid API key Wrong or expired key Update HITPAW_API_KEY
Insufficient coins Account balance too low Top up at HitPaw Playground
Unsupported model Model name typo or not available Check model table above
Invalid extension Output format not supported Use .jpg/.png/.webp for images; .mp4/.mov/.avi for videos
Invalid video URL URL not publicly accessible Ensure video is reachable via HTTPS
Input/target resolution over limit Exceeds 36 MP total pixels (e.g., 7680x4320 = ~33 MP) Reduce resolution
Video duration over limit Video longer than 1 hour Trim video first
Rate limit exceeded Too many requests Wait and retry with exponential backoff
Video processing failed Corrupt video or unsupported codec Try different input format or re-encode

Technical Details

API Compatibility

This skill implements the official HitPaw API as documented:

  • Base URL: https://api-base.hitpaw.com
  • Image endpoint: POST /api/photo-enhancer
  • Video endpoint: POST /api/video-enhancer
  • Status endpoint: POST /api/task-status

Both endpoints return a job_id. Use the status endpoint to poll until COMPLETED, then download from res_url.

Polling Strategy

  • Images: default poll every 5s, timeout 300s (5 min)
  • Videos: default poll every 10s, timeout 600s (10 min)

For longer videos, increase --timeout as needed (e.g., --timeout 3600 for 1 hour).

Resolution Handling

For videos, resolution is required. Choose based on your needs:

  • Keep original size? Set resolution to original dimensions (use --original-resolution for better quality).
  • Upscale? Multiply original width/height by factor (2x, 4x).
  • Downscale? Rare but possible; just specify smaller dimensions.

Max output: 36 megapixels total (width × height ≤ 36,000,000 pixels).
Examples: 3840×2160 = 8.3 MP ✅, 7680×4320 = 33.2 MP ✅, 8192×4608 = 37.7 MP ❌.

Audio Preservation

By default, enhance-video keeps the audio track (--keep-audio, default true). Use --no-keep-audio to strip audio.


Support

This skill is an unofficial integration with HitPaw API. You must have a valid API key and comply with HitPaw's terms. The skill author is not responsible for any charges incurred.

License

MIT © HitPaw-Official

Reviews (0)

Sign in to write a review.

No reviews yet. Be the first to review!

Comments (0)

Sign in to join the discussion.

No comments yet. Be the first to share your thoughts!

Compatible Platforms

Pricing

Free

Related Configs