Rembg MCP Server
Enables AI-powered background removal from images using multiple specialized models including u2net, birefnet, and isnet. Supports both single image processing and batch folder operations with advanced options like alpha matting and mask-only output.
README
Rembg MCP Server
An MCP (Model Context Protocol) server for the rembg background removal library. Remove image backgrounds using AI models through Claude Code, Claude Desktop, Cursor, and other MCP-compatible tools.
🎯 Features
- 🖼️ Image Processing: Remove backgrounds from single images or batch process folders
- 🤖 Multiple AI Models: u2net, birefnet, isnet, sam, and more specialized models
- ⚡ Performance Optimized: Model session reuse for efficient batch processing
- 🎨 Advanced Options: Alpha matting, mask-only output, custom backgrounds
- 🌍 Cross-Platform: Support for Windows, macOS, and Linux
- 🔧 Easy Integration: Works with Claude Desktop, Claude Code CLI, Cursor IDE
📦 Quick Start
🚀 One-Click Installation
Linux/macOS
git clone <repository-url>
cd rembg-mcp
./setup.sh
Windows
git clone <repository-url>
cd rembg-mcp
setup.bat
The setup scripts will automatically:
- Check Python 3.10+ requirement
- Create virtual environment
- Install all dependencies
- Configure MCP server
- Test the installation
- Guide you through AI model downloads
🔧 Manual Installation
If you prefer manual installation or need custom configuration:
- Create virtual environment:
python3 -m venv rembg
source rembg/bin/activate # Linux/macOS
# or
rembg\Scripts\activate.bat # Windows
- Install dependencies:
pip install --upgrade pip
pip install mcp "rembg[cpu,cli]" pillow
pip install -e .
- Test installation:
python test_server.py
python validate_setup.py
- Download AI models:
./download_models.sh # Linux/macOS
# or
python download_models.py # Windows (from activated venv)
- For GPU support:
pip install -e ".[gpu]"
🔧 MCP Configuration
Claude Desktop Setup
-
Find your Claude Desktop config file:
- macOS:
~/Library/Application Support/Claude/claude_desktop_config.json - Windows:
%APPDATA%\Claude\claude_desktop_config.json - Linux:
~/.config/Claude/claude_desktop_config.json
- macOS:
-
Add the rembg server configuration:
{
"mcpServers": {
"rembg": {
"command": "/path/to/rembg-mcp/start_server.sh",
"cwd": "/path/to/rembg-mcp",
"env": {
"REMBG_HOME": "~/.u2net",
"OMP_NUM_THREADS": "4"
}
}
}
}
-
Replace
/path/to/rembg-mcpwith your actual project path -
Restart Claude Desktop
Testing Your Setup
After configuration, test your MCP server:
- Start the server manually:
./start_server.sh # Linux/macOS
# or
start_server.bat # Windows
-
Verify MCP connection in Claude Desktop:
- Look for the rembg tools in your Claude conversation
- Try a simple command: "List available MCP tools"
-
Test with a sample image:
- Ask Claude: "Use rembg-i to remove the background from test.jpg"
- The server will process your request and return results
Claude Code CLI Setup
Add to your Claude Code settings:
{
"mcpServers": {
"rembg": {
"command": "/path/to/rembg-mcp/start_server.sh",
"cwd": "/path/to/rembg-mcp",
"env": {
"REMBG_HOME": "~/.u2net",
"OMP_NUM_THREADS": "4"
}
}
}
}
Cursor IDE Setup
Add to your Cursor settings or workspace .cursor/settings.json:
{
"mcp.servers": {
"rembg": {
"command": "/path/to/rembg-mcp/start_server.sh",
"args": [],
"cwd": "/path/to/rembg-mcp"
}
}
}
Windows Configuration
For Windows users, use start_server.bat instead:
{
"mcpServers": {
"rembg": {
"command": "C:\\path\\to\\rembg-mcp\\start_server.bat",
"cwd": "C:\\path\\to\\rembg-mcp"
}
}
}
🚀 How to Use
Once configured, you can use the rembg tools directly in your MCP-compatible application:
Basic Usage Examples
Single Image Processing:
Remove the background from my photo.jpg and save it as photo_nobg.png
Batch Processing:
Process all images in my Photos folder and remove their backgrounds
Advanced Processing:
Use the birefnet-portrait model to remove backgrounds from all portrait photos in my folder, apply alpha matting for better edges, and save them to a new folder
🛠️ Available MCP Tools
rembg-i - Single Image Background Removal
Removes background from a single image file with high precision.
Required Parameters:
input_path: Path to the source image fileoutput_path: Where to save the processed image
Optional Parameters:
model: AI model to use (default: "u2net")alpha_matting: Improve edge quality (default: false)only_mask: Output black/white mask only (default: false)
Supported formats: JPG, PNG, BMP, TIFF, WebP
rembg-p - Batch Folder Processing
Processes all images in a folder automatically.
Required Parameters:
input_folder: Source folder containing imagesoutput_folder: Destination folder for processed images
Optional Parameters:
model: AI model to use (default: "u2net")alpha_matting: Improve edge quality (default: false)only_mask: Output masks only (default: false)file_extensions: File types to process (default: common image formats)
Features:
- Automatically finds all supported images
- Preserves original filenames with
.out.pngsuffix - Detailed progress reporting
- Error handling for individual files
🤖 Supported AI Models
| Model | Use Case | Size | Quality |
|---|---|---|---|
u2net |
General purpose (default) | Medium | Good |
u2netp |
Lightweight version | Small | Good |
u2net_human_seg |
Human subjects | Medium | Good |
u2net_cloth_seg |
Clothing segmentation | Medium | Good |
silueta |
Lightweight general | Small | Good |
isnet-general-use |
High quality general | Large | Excellent |
isnet-anime |
Anime characters | Large | Excellent |
birefnet-general |
High accuracy general | Large | Excellent |
birefnet-portrait |
Portrait photos | Large | Excellent |
birefnet-massive |
Massive dataset trained | X-Large | Best |
sam |
Segment Anything (prompt-based) | Large | Variable |
🎯 Model Recommendations
For beginners: Start with u2net (default) - good balance of speed and quality
For best quality: Use birefnet-general or birefnet-massive
For portraits: Use birefnet-portrait - specialized for human subjects
For anime/cartoons: Use isnet-anime - optimized for animated content
For speed: Use u2netp or silueta - faster processing for batch jobs
📥 Downloading Models
Models are downloaded automatically when first used, but you can pre-download them:
# Interactive selection (recommended)
./download_models.sh # Linux/macOS
# Download specific models
./download_models.sh u2net birefnet-portrait
# Download all models
./download_models.sh all
# Windows (from activated virtual environment)
python download_models.py # Interactive
python download_models.py u2net birefnet-portrait
Models are cached in ~/.u2net/ and only need to be downloaded once.
🔧 Configuration
Environment Variables
REMBG_HOME: Model storage directory (default:~/.u2net)OMP_NUM_THREADS: Number of CPU threads for processing (default: 4)MODEL_CHECKSUM_DISABLED: Skip model checksum verification
Advanced Options
- Alpha Matting: Improves edge quality but increases processing time
- Mask Only: Returns black/white mask instead of transparent cutout
- Custom Background Colors: Replace transparent areas with solid colors
- Batch Processing: Automatically reuses model sessions for efficiency
📁 Project Structure
rembg-mcp/
├── rembg_mcp/
│ ├── __init__.py
│ └── server.py # Main MCP server implementation
├── rembg/ # Virtual environment (git-ignored)
├── setup.sh # Linux/macOS setup script
├── setup.bat # Windows setup script
├── start_server.sh # Linux/macOS server startup
├── start_server.bat # Windows server startup (generated)
├── pyproject.toml # Python package configuration
├── claude_desktop_config.json # Claude Desktop config (Linux/macOS)
├── claude_desktop_config_windows.json # Claude Desktop config (Windows)
├── test_server.py # Installation test
├── validate_setup.py # Comprehensive setup validation
├── download_models.py # AI model download utility (Python)
├── download_models.sh # AI model download script (Linux/macOS)
├── example_usage.py # Usage examples
├── README.md # This file
├── USAGE_CN.md # Chinese documentation
└── CLAUDE.md # Claude Code context file
🚨 Troubleshooting
Common Issues
MCP Server Not Found
- Verify the
commandpath in your MCP configuration - Ensure the script is executable:
chmod +x start_server.sh - Check that the virtual environment exists:
ls rembg/
Python Version Issues
python --version # Must be 3.10+
# If wrong version, install Python 3.10+ and recreate venv
Model Download Problems
# Clear model cache and re-download
rm -rf ~/.u2net
# Re-download models manually
./download_models.sh # Linux/macOS
python download_models.py # Windows
# Download a specific model
./download_models.sh u2net # Linux/macOS
python download_models.py u2net # Windows
Memory or Performance Issues
# Reduce CPU threads
export OMP_NUM_THREADS=2
# Use lighter models (u2netp, silueta) instead of large ones
Installation Problems
# Clean reinstall
rm -rf rembg/
./setup.sh # Or setup.bat on Windows
Getting Help
- Run
python validate_setup.pyfor detailed diagnostics - Check server logs when starting manually
- Ensure your MCP client supports the latest protocol version
📚 Additional Resources
🤝 Contributing
- Fork the repository
- Create your feature branch (
git checkout -b feature/amazing-feature) - Commit your changes (
git commit -m 'Add amazing feature') - Push to the branch (
git push origin feature/amazing-feature) - Open a Pull Request
📄 License
This project is licensed under the MIT License - see the LICENSE file for details.
🙏 Acknowledgments
- danielgatis/rembg - The excellent background removal library
- Anthropic - For the MCP protocol and Claude
- The open source community for the various AI models
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