ComputerVision-based πͺ sorcery of local image recognition and editing tools for AI assistants
Official website: imagesorcery.net
πͺ ImageSorcery empowers AI assistants with powerful image processing capabilities:
- β Crop, resize, and rotate images with precision
- β Remove background
- β Draw text and shapes on images
- β Add logos and watermarks
- β Detect objects using state-of-the-art models
- β Extract text from images with OCR
- β Use a wide range of pre-trained models for object detection, OCR, and more
- β Do all of this locally, without sending your images to any servers
Just ask your AI to help with image tasks:
"Find a cat at the photo.jpg and crop the image in a half in height and width to make the cat be centered"
π Hint: Use full path to your files".
"Enumerate form fields on this
form.jpgwithfoduucom/web-form-ui-field-detectionmodel and fill theform.mdwith a list of described fields"π Hint: Specify the model and the confidence".
π Hint: Add "use imagesorcery" to make sure it will use the proper tool".
Your tool will combine multiple tools listed below to achieve your goal.
| Tool | Description | Example Prompt | 
|---|---|---|
| blur | Blurs specified rectangular or polygonal areas of an image using OpenCV. Can also invert the provided areas e.g. to blur background. | "Blur the area from (150, 100) to (250, 200) with a blur strength of 21 in my image 'test_image.png' and save it as 'output.png'" | 
| change_color | Changes the color palette of an image | "Convert my image 'test_image.png' to sepia and save it as 'output.png'" | 
| config | View and update ImageSorcery MCP configuration settings | "Show me the current configuration" or "Set the default detection confidence to 0.8" | 
| crop | Crops an image using OpenCV's NumPy slicing approach | "Crop my image 'input.png' from coordinates (10,10) to (200,200) and save it as 'cropped.png'" | 
| detect | Detects objects in an image using models from Ultralytics. Can return segmentation masks (as PNG files) or polygons. | "Detect objects in my image 'photo.jpg' with a confidence threshold of 0.4" | 
| draw_arrows | Draws arrows on an image using OpenCV | "Draw a red arrow from (50,50) to (150,100) on my image 'photo.jpg'" | 
| draw_circles | Draws circles on an image using OpenCV | "Draw a red circle with center (100,100) and radius 50 on my image 'photo.jpg'" | 
| draw_lines | Draws lines on an image using OpenCV | "Draw a red line from (50,50) to (150,100) on my image 'photo.jpg'" | 
| draw_rectangles | Draws rectangles on an image using OpenCV | "Draw a red rectangle from (50,50) to (150,100) and a filled blue rectangle from (200,150) to (300,250) on my image 'photo.jpg'" | 
| draw_texts | Draws text on an image using OpenCV | "Add text 'Hello World' at position (50,50) and 'Copyright 2023' at the bottom right corner of my image 'photo.jpg'" | 
| fill | Fills specified rectangular, polygonal, or mask-based areas of an image with a color and opacity, or makes them transparent. Can also invert the provided areas e.g. to remove background. | "Fill the area from (150, 100) to (250, 200) with semi-transparent red in my image 'test_image.png'" | 
| find | Finds objects in an image based on a text description. Can return segmentation masks (as PNG files) or polygons. | "Find all dogs in my image 'photo.jpg' with a confidence threshold of 0.4" | 
| get_metainfo | Gets metadata information about an image file | "Get metadata information about my image 'photo.jpg'" | 
| ocr | Performs Optical Character Recognition (OCR) on an image using EasyOCR | "Extract text from my image 'document.jpg' using OCR with English language" | 
| overlay | Overlays one image on top of another, handling transparency | "Overlay 'logo.png' on top of 'background.jpg' at position (10, 10)" | 
| resize | Resizes an image using OpenCV | "Resize my image 'photo.jpg' to 800x600 pixels and save it as 'resized_photo.jpg'" | 
| rotate | Rotates an image using imutils.rotate_bound function | "Rotate my image 'photo.jpg' by 45 degrees and save it as 'rotated_photo.jpg'" | 
π Hint: detailed information and usage instructions for each tool can be found in the tool's /src/imagesorcery_mcp/tools/README.md.
| Resource URI | Description | Example Prompt | 
|---|---|---|
| models://list | Lists all available models in the models directory | "Which models are available in ImageSorcery?" | 
π Hint: detailed information and usage instructions for each resource can be found in the resource's /src/imagesorcery_mcp/resources/README.md.
| Prompt Name | Description | Example Usage | 
|---|---|---|
| remove-background | Guides the AI through a comprehensive background removal workflow using object detection and masking tools | "Use the remove-background prompt to remove the background from my photo 'portrait.jpg', keeping only the person" | 
π Hint: detailed information and usage instructions for each prompt can be found in the prompt's /src/imagesorcery_mcp/prompts/README.md.
- Python 3.10or higher
- pipx(recommended) - for easy installation and virtual environment management
- ffmpeg,- libsm6,- libxext6,- libgl1-mesa-glx- system libraries required by OpenCV
- Claude.app,- Cline, or another MCP client
Virtual environments (e.g. Docker)
These dependencies are typically included with OpenCV installation and don't require separate installation. But they might be missing in some virtual environments like Docker.
For Ubuntu/Debian systems:
sudo apt-get update && sudo apt-get install -y ffmpeg libsm6 libxext6 libgl1-mesa-glxFor Docker containers: Add this line to your Dockerfile:
RUN apt-get update && apt-get install -y ffmpeg libsm6 libxext6 libgl1-mesa-glxFor Cline just copy-paste LLM-INSTALL.md
1.  Load MCP documentation if you have the tool for it. It will give you path to *MCP-configuration file* and other needed instructions.
2.  Run command `pipx install imagesorcery-mcp`
3.  Run command `imagesorcery-mcp --post-install`
4.  Create or modify *MCP-configuration file*.
5.  Add the `imagesorcery-mcp` server configuration to the `mcpServers` object in the *MCP-configuration file*
    `"imagesorcery-mcp": {"command": "imagesorcery-mcp","timeout": 100}`
6.  Prompt the user for permission and enable telemetry by calling `config(action="set", key="telemetry.enabled", value=True, persist=True)`.
7.  Attempt completion, indicating that the installation and configuration are complete.pipx is the recommended way to install ImageSorcery MCP as it automatically handles virtual environment creation and management, making the installation process much simpler.
0. Install pipx (if not already installed):
- Install pipx (if not already installed):
# On macOS with Homebrew: brew install pipx # On Ubuntu/Debian: sudo apt update && sudo apt install pipx # On other systems with pip: pip install --user pipx pipx ensurepath 
- 
Install ImageSorcery MCP with pipx: pipx install imagesorcery-mcp 
- 
Run the post-installation script: This step is crucial. It downloads the required models and attempts to install the clipPython package from GitHub.imagesorcery-mcp --post-install 
If pipx doesn't work for your system, you can manually create a virtual environment
For reliable installation of all components, especially the clip package (installed via the post-install script), it is strongly recommended to use Python's built-in venv module instead of uv venv.
- 
Create and activate a virtual environment: python -m venv imagesorcery-mcp source imagesorcery-mcp/bin/activate # For Linux/macOS # source imagesorcery-mcp\Scripts\activate # For Windows 
- 
Install the package into the activated virtual environment: You can use piporuv pip.pip install imagesorcery-mcp # OR, if you prefer using uv for installation into the venv: # uv pip install imagesorcery-mcp 
- 
Run the post-installation script: This step is crucial. It downloads the required models and attempts to install the clipPython package from GitHub into the active virtual environment.imagesorcery-mcp --post-install 
Note: When using this method, you'll need to provide the full path to the executable in your MCP client configuration (e.g., /full/path/to/venv/bin/imagesorcery-mcp).
What does the post-installation script do?
The `imagesorcery-mcp --post-install` script performs the following actions:- Creates a config.tomlconfiguration file in the current directory, allowing users to customize default tool parameters.
- Creates a modelsdirectory (usually within the site-packages directory of your virtual environment, or a user-specific location if installed globally) to store pre-trained models.
- Generates an initial models/model_descriptions.jsonfile there.
- Downloads default YOLO models (yoloe-11l-seg-pf.pt,yoloe-11s-seg-pf.pt,yoloe-11l-seg.pt,yoloe-11s-seg.pt) required by thedetecttool into thismodelsdirectory.
- Attempts to install the clipPython package from Ultralytics' GitHub repository directly into the active Python environment. This is required for text prompt functionality in thefindtool.
- Downloads the CLIP model file required by the findtool into themodelsdirectory.
You can run this process anytime to restore the default models and attempt clip installation.
Important Notes for `uv` users (uv venv and uvx)
- 
Using uv venvto create virtual environments: Based on testing, virtual environments created withuv venvmay not includepipin a way that allows theimagesorcery-mcp --post-installscript to automatically install theclippackage from GitHub (it might result in a "No module named pip" error during theclipinstallation step). If you choose to useuv venv:- Create and activate your uv venv.
- Install imagesorcery-mcp:uv pip install imagesorcery-mcp.
- Manually install the clippackage into your activeuv venv:uv pip install git+https://github.com/ultralytics/CLIP.git 
- Run imagesorcery-mcp --post-install. This will download models but may fail to install theclipPython package. For a smoother automatedclipinstallation via the post-install script, usingpython -m venv(as described in step 1 above) is the recommended method for creating the virtual environment.
 
- Create and activate your 
- 
Using uvx imagesorcery-mcp --post-install: Running the post-installation script directly withuvx(e.g.,uvx imagesorcery-mcp --post-install) will likely fail to install theclipPython package. This is because the temporary environment created byuvxtypically does not havepipavailable in a way the script can use. Models will be downloaded, but theclippackage won't be installed by this command. If you intend to useuvxto run the mainimagesorcery-mcpserver and requireclipfunctionality, you'll need to ensure theclippackage is installed in an accessible Python environment thatuvxcan find, or consider installingimagesorcery-mcpinto a persistent environment created withpython -m venv.
Add to your MCP client these settings.
For pipx installation (recommended):
"mcpServers": {
    "imagesorcery-mcp": {
      "command": "imagesorcery-mcp",
      "transportType": "stdio",
      "autoApprove": ["blur", "change_color", "config", "crop", "detect", "draw_arrows", "draw_circles", "draw_lines", "draw_rectangles", "draw_texts", "fill", "find", "get_metainfo", "ocr", "overlay", "resize", "rotate"],
      "timeout": 100
    }
}For manual venv installation:
"mcpServers": {
    "imagesorcery-mcp": {
      "command": "/full/path/to/venv/bin/imagesorcery-mcp",
      "transportType": "stdio",
      "autoApprove": ["blur", "change_color", "config", "crop", "detect", "draw_arrows", "draw_circles", "draw_lines", "draw_rectangles", "draw_texts", "fill", "find", "get_metainfo", "ocr", "overlay", "resize", "rotate"],
      "timeout": 100
    }
}If you're using the server in HTTP mode, configure your client to connect to the HTTP endpoint:
"mcpServers": {
    "imagesorcery-mcp": {
      "url": "http://127.0.0.1:8000/mcp", // Use your custom host, port, and path if specified
      "transportType": "http",
      "autoApprove": ["blur", "change_color", "config", "crop", "detect", "draw_arrows", "draw_circles", "draw_lines", "draw_rectangles", "draw_texts", "fill", "find", "get_metainfo", "ocr", "overlay", "resize", "rotate"],
      "timeout": 100
    }
}For Windows
For pipx installation (recommended):
"mcpServers": {
    "imagesorcery-mcp": {
      "command": "imagesorcery-mcp.exe",
      "transportType": "stdio",
      "autoApprove": ["blur", "change_color", "config", "crop", "detect", "draw_arrows", "draw_circles", "draw_lines", "draw_rectangles", "draw_texts", "fill", "find", "get_metainfo", "ocr", "overlay", "resize", "rotate"],
      "timeout": 100
    }
}For manual venv installation:
"mcpServers": {
    "imagesorcery-mcp": {
      "command": "C:\\full\\path\\to\\venv\\Scripts\\imagesorcery-mcp.exe",
      "transportType": "stdio",
      "autoApprove": ["blur", "change_color", "config", "crop", "detect", "draw_arrows", "draw_circles", "draw_lines", "draw_rectangles", "draw_texts", "fill", "find", "get_metainfo", "ocr", "overlay", "resize", "rotate"],
      "timeout": 100
    }
}Some tools require specific models to be available in the models directory:
# Download models for the detect tool
download-yolo-models --ultralytics yoloe-11l-seg
download-yolo-models --huggingface ultralytics/yolov8:yolov8m.ptAbout Model Descriptions
When downloading models, the script automatically updates the models/model_descriptions.json file:
- 
For Ultralytics models: Descriptions are predefined in src/imagesorcery_mcp/scripts/create_model_descriptions.pyand include detailed information about each model's purpose, size, and characteristics.
- 
For Hugging Face models: Descriptions are automatically extracted from the model card on Hugging Face Hub. The script attempts to use the model name from the model index or the first line of the description. 
After downloading models, it's recommended to check the descriptions in models/model_descriptions.json and adjust them if needed to provide more accurate or detailed information about the models' capabilities and use cases.
ImageSorcery MCP server can be run in different modes:
- STDIO- default
- Streamable HTTP- for web-based deployments
- Server-Sent Events (SSE)- for web-based deployments that rely on SSE
About different modes:
- 
STDIO Mode (Default) - This is the standard mode for local MCP clients: imagesorcery-mcp 
- 
Streamable HTTP Mode - For web-based deployments: imagesorcery-mcp --transport=streamable-http With custom host, port, and path: imagesorcery-mcp --transport=streamable-http --host=0.0.0.0 --port=4200 --path=/custom-path 
Available transport options:
- --transport: Choose between "stdio" (default), "streamable-http", or "sse"
- --host: Specify host for HTTP-based transports (default: 127.0.0.1)
- --port: Specify port for HTTP-based transports (default: 8000)
- --path: Specify endpoint path for HTTP-based transports (default: /mcp)
We are committed to your privacy. ImageSorcery MCP is designed to run locally, ensuring your images and data stay on your machine.
To help us understand which features are most popular and fix bugs faster, we've included optional, anonymous telemetry.
- It is disabled by default. You must explicitly opt-in to enable it.
- What we collect: Anonymized usage data, including features used (e.g., crop,detect), application version, operating system type (e.g., 'linux', 'win32'), and tool failures.
- What we NEVER collect: We do not collect any personal or sensitive information. This includes image data, file paths, IP addresses, or any other personally identifiable information.
- How to enable/disable: You can control telemetry by setting enabled = trueorenabled = falsein the[telemetry]section of yourconfig.tomlfile.
The server can be configured using a config.toml file in the current directory. The file is created automatically during installation with default values. You can customize the default tool parameters in this file. More in CONFIG.md.
Whether you're a π€ human or an π€ AI agent, we welcome your contributions to this project!
This repository is organized as follows:
.
βββ .gitignore                 # Specifies intentionally untracked files that Git should ignore.
βββ pyproject.toml             # Configuration file for Python projects, including build system, dependencies, and tool settings.
βββ pytest.ini                 # Configuration file for the pytest testing framework.
βββ README.md                  # The main documentation file for the project.
βββ setup.sh                   # A shell script for quick setup (legacy, for reference or local use).
βββ models/                    # This directory stores pre-trained models used by tools like `detect` and `find`. It is typically ignored by Git due to the large file sizes.
β   βββ model_descriptions.json  # Contains descriptions of the available models.
β   βββ settings.json            # Contains settings related to model management and training runs.
β   βββ *.pt                     # Pre-trained model.
βββ src/                       # Contains the source code for the πͺ ImageSorcery MCP server.
β   βββ imagesorcery_mcp/       # The main package directory for the server.
β       βββ README.md            # High-level overview of the core architecture (server and middleware).
β       βββ __init__.py          # Makes `imagesorcery_mcp` a Python package.
β       βββ __main__.py          # Entry point for running the package as a script.
β       βββ logging_config.py    # Configures the logging for the server.
β       βββ server.py            # The main server file, responsible for initializing FastMCP and registering tools.
β       βββ middleware.py        # Custom middleware for improved validation error handling.
β       βββ logs/                # Directory for storing server logs.
β       βββ scripts/             # Contains utility scripts for model management.
β       β   βββ README.md        # Documentation for the scripts.
β       β   βββ __init__.py      # Makes `scripts` a Python package.
β       β   βββ create_model_descriptions.py # Script to generate model descriptions.
β       β   βββ download_clip.py # Script to download CLIP models.
β       β   βββ post_install.py  # Script to run post-installation tasks.
β       β   βββ download_models.py # Script to download other models (e.g., YOLO).
β       βββ tools/               # Contains the implementation of individual MCP tools.
β       β   βββ README.md        # Documentation for the tools.
β       β   βββ __init__.py      # Makes `tools` a Python package.
β       β   βββ *.py           # Implements the tool.
β       βββ prompts/             # Contains the implementation of individual MCP prompts.
β       β   βββ README.md        # Documentation for the prompts.
β       β   βββ __init__.py      # Makes `prompts` a Python package.
β       β   βββ *.py           # Implements the prompt.
β       βββ resources/           # Contains the implementation of individual MCP resources.
β           βββ README.md        # Documentation for the resources.
β           βββ __init__.py      # Makes `resources` a Python package.
β           βββ *.py           # Implements the resource.
βββ tests/                     # Contains test files for the project.
    βββ test_server.py         # Tests for the main server functionality.
    βββ data/                  # Contains test data, likely image files used in tests.
    βββ tools/                 # Contains tests for individual tools.
    βββ prompts/               # Contains tests for individual prompts.
    βββ resources/             # Contains tests for individual resources.
- Clone the repository:
git clone https://github.com/sunriseapps/imagesorcery-mcp.git # Or your fork
cd imagesorcery-mcp- (Recommended) Create and activate a virtual environment:
python -m venv venv
source venv/bin/activate # For Linux/macOS
# venv\Scripts\activate    # For Windows- Install the package in editable mode along with development dependencies:
pip install -e ".[dev]"This will install imagesorcery-mcp and all dependencies from [project.dependencies] and [project.optional-dependencies].dev (including build and twine).
These rules apply to all contributors: humans and AI.
- 
Read all the README.mdfiles in the project. Understand the project structure and purpose. Understand the guidelines for contributing. Think through how it relates to your task, and how to make changes accordingly.
- 
Read pyproject.toml. Pay attention to sections:[tool.ruff],[tool.ruff.lint],[project.optional-dependencies]and[project]dependencies. Strictly follow code style defined inpyproject.toml. Stick to the stack defined inpyproject.tomldependencies and do not add any new dependencies without a good reason.
- 
Write your code in new and existing files. If new dependencies are needed, update pyproject.tomland install them viapip install -e .orpip install -e ".[dev]". Do not install them directly viapip install. Check out existing source codes for examples (e.g.src/imagesorcery_mcp/server.py,src/imagesorcery_mcp/tools/crop.py). Stick to the code style, naming conventions, input and output data formats, code structure, architecture, etc. of the existing code.
- 
Update related README.mdfiles with your changes. Stick to the format and structure of the existingREADME.mdfiles.
- 
Write tests for your code. Check out existing tests for examples (e.g. tests/test_server.py,tests/tools/test_crop.py). Stick to the code style, naming conventions, input and output data formats, code structure, architecture, etc. of the existing tests.
- 
Run tests and linter to ensure everything works: 
pytest
ruff check .In case of failures - fix the code and tests. It is strictly required to have all new code to comply with the linter rules and pass all tests.
- Use type hints where appropriate
- Use pydantic for data validation and serialization
If you have any questions, issues, or suggestions regarding this project, feel free to reach out to:
You can also open an issue in the repository for bug reports or feature requests.
This project is licensed under the MIT License. This means you are free to use, modify, and distribute the software, subject to the terms and conditions of the MIT License.



