Skip to main content
Glama

MCP Image Tools Server

A Model Context Protocol (MCP) server that provides powerful image processing tools for Claude Code. This server implements three main functionalities: downloading toy-related images from the web, resizing images, and removing backgrounds from images.


Session Prompts & Workflow

The following prompts were used in this project to demonstrate the image processing pipeline. Each prompt drove a real Claude Code session.

Prompt 1 — Full image pipeline

Download 3 different random pictures of single squid. Resize below 150px either
the width or the length. Remove the background and store as png named with
suffix "_rembg".

What happened:

  • DuckDuckGo search was rate-limited (403), so images were fetched directly from Wikimedia Commons using its public API.

  • 3 squid images downloaded: Bigfin reef squid, Gould's flying squid, Loligo vulgaris.

  • All 3 resized to max 150px on the longest side with aspect ratio preserved.

  • Background removal attempted — server kept disconnecting (see Prompt 2).

Prompt 2 — Bug investigation & fix

Check why image background removal on the 3 squid images are taking so long
and fix the bug. Verify after fix the bug.

Root causes found and fixed:

#

Bug

Fix

1

new_session() and remove() are synchronous/CPU-bound but called directly inside async def, blocking the entire asyncio event loop and starving MCP keepalives

Wrapped rembg work in asyncio.to_thread() so the event loop stays alive during processing

2

rembg was installed without its [cpu] extra, so onnxruntime was missing — causing a hard crash on first use

Changed rembg>=2.0.50rembg[cpu]>=2.0.50 in requirements.txt

3

The u2net model (~176MB) was downloaded from the internet on every cold container start, making the first call very slow and compounding the blocked-loop problem

Added a RUN python -c "from rembg import new_session; new_session('u2net')" step in Dockerfile to bake the model into the image at build time

Outcome: All 3 background removals completed successfully in parallel after the rebuild.


Related MCP server: gimmick-vision-mcp

Features

🧸 Toy Image Fetcher (fetch_toy_image)

  • Downloads toy-related images from DuckDuckGo search

  • Automatically prefixes search terms with "toy" for better results

  • Supports downloading 1-10 images per request

  • Saves images to a specified directory

🖼️ Image Resizer (resize_image)

  • Resize images to specific dimensions

  • Option to maintain aspect ratio

  • High-quality resampling using Lanczos algorithm

  • Support for all common image formats

✂️ Background Remover (remove_background_as_png)

  • AI-powered background removal using state-of-the-art models

  • Multiple model options (u2net, u2netp, silueta, isnet-general-use)

  • Outputs PNG with transparent background

  • Preserves main object details

Prerequisites

  • Python 3.11 or higher

  • Docker (for containerized deployment)

  • Claude Code (for MCP client integration)

Installation

Option 1: Local Python Installation

  1. Clone or create the project directory:

    mkdir mcp-toy-image-tools && cd mcp-toy-image-tools
  2. Install Python dependencies:

    pip install -r requirements.txt
  3. Run the server:

    python server.py
  1. Build the Docker image:

    docker build -t mcp-toy-image-tools-server .
  2. Create necessary directories:

    mkdir -p images input output
  3. Run the container:

    docker run --rm -i \
      --name mcp-toy-image-tools \
      -v $(pwd)/images:/app/images \
      -v $(pwd)/input:/app/input \
      -v $(pwd)/output:/app/output \
      mcp-toy-image-tools-server

Claude Code Integration

Step 1: Configure Claude Code

  1. Copy the MCP configuration to your Claude Code settings:

    For Docker execution:

    {
      "mcpServers": {
        "image-tools-server-docker": {
          "command": "docker",
          "args": [
            "run",
            "--rm",
            "-i",
            "--name", "mcp-toy-image-tools",
            "-v", "${PWD}/images:/app/images",
            "-v", "${PWD}/input:/app/input",
            "-v", "${PWD}/output:/app/output",
            "mcp-toy-image-tools-server"
          ],
          "cwd": "/path/to/your/mcp-toy-image-tools"
        }
      }
    }
  2. Update the cwd path to match your actual project directory.

Step 2: Restart Claude Code

After updating your MCP configuration, restart Claude Code to load the new server.

Usage Examples

Once integrated with Claude Code, you can use these commands:

Download Toy Images

Please use the fetch_toy_image tool to download 5 robot toy images to the ./images directory.

Resize Images

Can you resize the image at ./images/robot_toy_1.jpg to 800x600 pixels?

Remove Background

Please remove the background from ./images/robot_toy_1.jpg and save it as a PNG.

File Structure

mcp-toy-image-tools/
├── server.py              # Main MCP server implementation
├── requirements.txt       # Python dependencies
├── Dockerfile            # Docker container configuration
├── .mcp.json            # Claude Code MCP configuration
├── README.md            # This documentation
├── images/              # Directory for downloaded/processed images
├── input/               # Directory for input images (Docker)
└── output/              # Directory for output images (Docker)

Dependencies

Python Libraries

  • mcp: Anthropic's Model Context Protocol SDK

  • Pillow: Python Imaging Library for image processing

  • requests: HTTP client for downloading images

  • duckduckgo-search: DuckDuckGo search API client

  • rembg[cpu]: AI background removal (includes onnxruntime for CPU inference)

  • numpy: Numerical operations required by rembg

System Dependencies (Docker only)

  • OpenGL libraries for image processing

  • GLib and threading libraries

  • Various image format support libraries

Configuration Options

Environment Variables

  • PYTHONPATH: Set to project directory for proper module resolution

Volume Mounts (Docker)

  • /app/images: Directory for downloaded and processed images

  • /app/input: Input directory for source images

  • /app/output: Output directory for processed images

Troubleshooting

Common Issues

  1. "duckduckgo-search library not available" error:

    pip install duckduckgo-search
  2. Image download failures:

    • Check internet connection

    • Some images may be blocked by the source website

    • The tool automatically retries with additional results

  3. Background removal MCP server disconnects or times out:

    • This was caused by new_session() and remove() blocking the asyncio event loop.

    • Fixed by running rembg in a thread: await asyncio.to_thread(_process) in server.py.

    • Also ensure rembg[cpu] (not just rembg) is in requirements.txt so onnxruntime is present.

    • The u2net model is now pre-downloaded at Docker build time — no runtime network fetch needed.

  4. Permission errors (Docker):

    • Ensure volume mount directories have proper permissions

    • The container runs as non-root user mcp-user

Debug Mode

To run with debug logging:

# Direct Python
PYTHONPATH=. python server.py --log-level DEBUG

# Docker
docker run --rm -i -e LOG_LEVEL=DEBUG mcp-toy-image-tools-server

Claude Code Connection Issues

  1. Server not appearing in Claude Code:

    • Check that .mcp.json is in the correct location

    • Verify the cwd path is correct

    • Restart Claude Code after configuration changes

  2. Tool execution errors:

    • Check server logs for detailed error messages

    • Ensure all dependencies are installed

    • Verify file paths are accessible

Development

Adding New Tools

The server uses FastMCP's @mcp.tool() decorator pattern. To add a new tool:

  1. Define an async function decorated with @mcp.tool() in server.py:

    @mcp.tool()
    async def your_new_tool(image_path: str, param: str = "default") -> str:
        """Short description shown in Claude Code tool list."""
        # For CPU-bound or blocking work, use asyncio.to_thread():
        def _process():
            # heavy work here
            return result
        return await asyncio.to_thread(_process)
  2. Rebuild the Docker image and reconnect:

    docker build -t mcp-toy-image-tools-server .
    # Then /mcp → Reconnect in Claude Code

Testing

Test the server independently:

echo '{"method": "tools/list", "params": {}}' | python server.py

License

This project is provided as-is for educational and development purposes. Please respect the terms of service of image sources and AI models used.

Contributing

  1. Fork the repository

  2. Create a feature branch

  3. Make your changes

  4. Test thoroughly

  5. Submit a pull request

Support

For issues and questions:

  • Check the troubleshooting section above

  • Review Claude Code MCP documentation

  • Submit issues to the project repository


Note: This tool downloads images from the internet and uses AI models for processing. Please use responsibly and respect copyright and terms of service of source websites.

F
license - not found
-
quality - not tested
C
maintenance

Maintenance

Maintainers
Response time
Release cycle
Releases (12mo)
Commit activity

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/sysphcd/claude_code_custom_mcp_server'

If you have feedback or need assistance with the MCP directory API, please join our Discord server