Image Tools MCP
Retrieve image dimensions and compress images from URLs or local files using Tinify and Figma APIs.
Image Tools MCP
A Model Context Protocol (MCP) service for retrieving image dimensions and compressing images, supporting both URL and local file sources.
Features
- Retrieve image dimensions from URLs
- Get image dimensions from local files
- Compress images from URLs using TinyPNG API
- Compress local images using TinyPNG API
- Convert images to different formats (webp, jpeg/jpg, png)
- Returns width, height, type, MIME type, and compression information
Example Results


download from figma url and compress

Usage
Using as an MCP Service
This service provides five tool functions:
get_image_size- Get dimensions of remote imagesget_local_image_size- Get dimensions of local imagescompress_image_from_url- Compress remote images using TinyPNG APIcompress_local_image- Compress local images using TinyPNG APIfigma- Fetch image links from Figma API and compress them using TinyPNG API
Client Integration
To use this MCP service, you need to connect to it from an MCP client. Here are examples of how to integrate with different clients:
Usage
{
"mcpServers": {
"image-tools": {
"command": "npx",
"args": ["image-tools-mcp"],
"env": {
"TINIFY_API_KEY": "<YOUR_TINIFY_API_KEY>",
"FIGMA_API_TOKEN": "<YOUR_FIGMA_API_TOKEN>"
}
}
}
}
Using with MCP Client Library
import { McpClient } from "@modelcontextprotocol/client";
// Initialize the client
const client = new McpClient({
transport: "stdio" // or other transport options
});
// Connect to the server
await client.connect();
// Get image dimensions from URL
const urlResult = await client.callTool("get_image_size", {
options: {
imageUrl: "https://example.com/image.jpg"
}
});
console.log(JSON.parse(urlResult.content[0].text));
// Output: { width: 800, height: 600, type: "jpg", mime: "image/jpeg" }
// Get image dimensions from local file
const localResult = await client.callTool("get_local_image_size", {
options: {
imagePath: "D:/path/to/image.png"
}
});
console.log(JSON.parse(localResult.content[0].text));
// Output: { width: 1024, height: 768, type: "png", mime: "image/png", path: "D:/path/to/image.png" }
// Compress image from URL
const compressUrlResult = await client.callTool("compress_image_from_url", {
options: {
imageUrl: "https://example.com/image.jpg",
outputFormat: "webp" // Optional: convert to webp, jpeg/jpg, or png
}
});
console.log(JSON.parse(compressUrlResult.content[0].text));
// Output: { originalSize: 102400, compressedSize: 51200, compressionRatio: "50.00%", tempFilePath: "/tmp/compressed_1615456789.webp", format: "webp" }
// Compress local image
const compressLocalResult = await client.callTool("compress_local_image", {
options: {
imagePath: "D:/path/to/image.png",
outputPath: "D:/path/to/compressed.webp", // Optional
outputFormat: "image/webp" // Optional: convert to image/webp, image/jpeg, or image/png
}
});
console.log(JSON.parse(compressLocalResult.content[0].text));
// Output: { originalSize: 102400, compressedSize: 51200, compressionRatio: "50.00%", outputPath: "D:/path/to/compressed.webp", format: "webp" }
// Fetch image links from Figma API
const figmaResult = await client.callTool("figma", {
options: {
figmaUrl: "https://www.figma.com/file/XXXXXXX"
}
});
console.log(JSON.parse(figmaResult.content[0].text));
// Output: { imageLinks: ["https://example.com/image1.jpg", "https://example.com/image2.jpg"] }
### Tool Schemas
#### get_image_size
```typescript
{
options: {
imageUrl: string // URL of the image to retrieve dimensions for
}
}
get_local_image_size
{
options: {
imagePath: string; // Absolute path to the local image file
}
}
compress_image_from_url
{
options: {
imageUrl: string // URL of the image to compress
outputFormat?: "image/webp" | "image/jpeg" | "image/jpg" | "image/png" // Optional output format
}
}
compress_local_image
{
options: {
imagePath: string // Absolute path to the local image file
outputPath?: string // Optional absolute path for the compressed output image
outputFormat?: "image/webp" | "image/jpeg" | "image/jpg" | "image/png" // Optional output format
}
}
figma
{
options: {
figmaUrl: string; // URL of the Figma file to fetch image links from
}
}
Changelog
- 2025-05-12: Updated Figma API to support additional parameters, including 2x image scaling.
Technical Implementation
This project is built on the following libraries:
- probe-image-size - For image dimension detection
- tinify - For image compression via the TinyPNG API
- figma-api - For fetching image links from Figma API
Environment Variables
TINIFY_API_KEY- Required for image compression functionality. Get your API key from TinyPNG- When not provided, the compression tools (
compress_image_from_urlandcompress_local_image) will not be registered
- When not provided, the compression tools (
FIGMA_API_TOKEN- Required for fetching image links from Figma API. Get your API token from Figma- When not provided, the Figma tool (
figma) will not be registered
- When not provided, the Figma tool (
Note: The basic image dimension tools (get_image_size and get_local_image_size) are always available regardless of API keys.
License
MIT
Máy chủ liên quan
Scout Monitoring MCP
nhà tài trợPut performance and error data directly in the hands of your AI assistant.
Alpha Vantage MCP Server
nhà tài trợAccess financial market data: realtime & historical stock, ETF, options, forex, crypto, commodities, fundamentals, technical indicators, & more
ProjectFlow
A workflow management system for AI-assisted development with MCP support, featuring flexible storage via file system or PostgreSQL.
Scientific Computation MCP
Provides tools for scientific computation, including tensor storage, linear algebra, vector calculus, and visualization.
Snowfort Circuit MCP
Automate web browsers and Electron desktop applications for AI coding agents.
SAME (Stateless Agent Memory Engine
Your AI's memory shouldn't live on someone else's server — 12 MCP tools that give it persistent context from your local markdown, no cloud, no API keys, single binary.
x64dbgMCP
An MCP server that connects LLMs with the x64dbg debugger, enabling natural language control over debugging functions.
MCP Rules Enforcer Zero
An MCP server that enforces rules from markdown files for AI agents. This is a zero-tool version that requires an external rules file.
MCP CLI
A command-line interface for interacting with Model Context Protocol servers.
Zero-Vector v3
A server for Zero-Vector's hybrid vector-graph persona and memory management system, featuring advanced LangGraph workflow capabilities.
MCP DevTools
A development tools server for Git management, file operations, AI-assisted editing, and terminal execution, integrable with AI assistants and code editors.
LogAI MCP Server
An MCP server for log analysis using the LogAI framework, with optional Grafana and GitHub integrations.