MCP Read Images
Analyze images using OpenRouter's vision models. Requires an OpenRouter API key.
MCP Read Images
An MCP server for analyzing images using OpenRouter vision models. This server provides a simple interface to analyze images using various vision models like Claude-3.5-sonnet and Claude-3-opus through the OpenRouter API.
Installation
npm install @catalystneuro/mcp_read_images
Configuration
The server requires an OpenRouter API key. You can get one from OpenRouter.
Add the server to your MCP settings file (usually located at ~/Library/Application Support/Code/User/globalStorage/saoudrizwan.claude-dev/settings/cline_mcp_settings.json for VSCode):
{
"mcpServers": {
"read_images": {
"command": "read_images",
"env": {
"OPENROUTER_API_KEY": "your-api-key-here",
"OPENROUTER_MODEL": "anthropic/claude-3.5-sonnet" // optional, defaults to claude-3.5-sonnet
},
"disabled": false,
"autoApprove": []
}
}
}
Usage
The server provides a single tool analyze_image that can be used to analyze images:
// Basic usage with default model
use_mcp_tool({
server_name: "read_images",
tool_name: "analyze_image",
arguments: {
image_path: "/path/to/image.jpg",
question: "What do you see in this image?" // optional
}
});
// Using a specific model for this call
use_mcp_tool({
server_name: "read_images",
tool_name: "analyze_image",
arguments: {
image_path: "/path/to/image.jpg",
question: "What do you see in this image?",
model: "anthropic/claude-3-opus-20240229" // overrides default and settings
}
});
Model Selection
The model is selected in the following order of precedence:
- Model specified in the tool call (
modelargument) - Model specified in MCP settings (
OPENROUTER_MODELenvironment variable) - Default model (anthropic/claude-3.5-sonnet)
Supported Models
The following OpenRouter models have been tested:
- anthropic/claude-3.5-sonnet
- anthropic/claude-3-opus-20240229
Features
- Automatic image resizing and optimization
- Configurable model selection
- Support for custom questions about images
- Detailed error messages
- Automatic JPEG conversion and quality optimization
Error Handling
The server handles various error cases:
- Invalid image paths
- Missing API keys
- Network errors
- Invalid model selections
- Image processing errors
Each error will return a descriptive message to help diagnose the issue.
Development
To build from source:
git clone https://github.com/catalystneuro/mcp_read_images.git
cd mcp_read_images
npm install
npm run build
License
MIT License. See LICENSE for details.
Похожие серверы
Alpha Vantage MCP Server
спонсорAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
Change8
Breaking Change Alerts for Humans and AI Agents.
Jetbrains Index Intelligence MCP Plugin
Allows AI-powered coding assistants to tap into your JetBrains IDE’s semantic code index and refactoring engine — giving them true code intelligence (symbol lookup, references, refactors, diagnostics, etc.) via MCP.
Locust MCP Server
An MCP server for running Locust load tests. Configure test parameters like host, users, and spawn rate via environment variables.
Apifox MCP Server
Provides API documentation from Apifox projects as a data source for AI programming tools that support MCP.
BlenderMCP
Integrates with Blender to enable text and image-based 3D model editing using the Model Context Protocol.
durable-objects-mcp
Query your Cloudflare Durable Objects from Claude Code, Cursor, and other AI clients
Deep Code Reasoning MCP Server
Performs complementary code analysis by combining Claude Code and Google's Gemini AI.
Studio MCP
Turns any command-line interface (CLI) command into a simple StdIO-based MCP server.
Last9
Seamlessly bring real-time production context—logs, metrics, and traces—into your local environment to auto-fix code faster.
Chromewright
Browser automation via Chrome DevTools Protocol