Command Palette

Search for a command to run...

UnylyUnyly
Browse all

Fast Paddleocr

FreeNot checked

Extracts text from images using PaddleOCR and outputs results in markdown format, optimized for fast inference with GPU auto-detection.

GitHubEmbed

About

Extracts text from images using PaddleOCR and outputs results in markdown format, optimized for fast inference with GPU auto-detection.

README

PaddleOCR MCP (Model Context Protocol) server and CLI tool that extracts text from images and outputs results in markdown format. Optimized for fast inference with GPU auto-detection.

MCP Server Configuration

The MCP (Model Context Protocol) server allows integration with MCP clients like Cursor, Claude Desktop, etc.

Use uvx directly (no installation required, automatically downloads from PyPI):

{
  "mcpServers": {
    "fast-paddleocr-mcp": {
      "command": "uvx",
      "args": ["fast-paddleocr-mcp"]
    }
  }
}

MCP Tool: ocr_image

The server provides a single tool called ocr_image that:

  • Input: image_path (string) - Path to the input image file
  • Output: Returns the path to the generated markdown file containing OCR results
  • Automatic optimizations: All performance optimizations are applied automatically with intelligent fallback
  • Default language: Uses 'ch' (Chinese and English) by default for maximum compatibility

Example: When called with image_path: "photo.png", it returns "photo.png.md" containing the recognized text.

Note: The server automatically applies all optimizations (HPI, GPU acceleration, image preprocessing, etc.) and falls back to simpler configurations if needed. No configuration required from the caller.

See MCP_README.md for detailed MCP server documentation.

Usage

Basic Usage

The tool is optimized for speed by default with the following settings:

  • Fast mode enabled (disables preprocessing for maximum speed)
  • PP-OCRv4 (faster mobile models)
  • 640px image size limit (faster processing)
  • Auto GPU detection (uses GPU if available, falls back to CPU)
# Output will be saved as <image_name>.png.md
# Uses: fast mode + PP-OCRv4 + 640px + auto GPU detection
uvx --from . paddleocr-md image.png

# Specify custom output path
uvx --from . paddleocr-md image.png -o result.md

# Force CPU mode
uvx --from . paddleocr-md image.png --cpu

# Disable fast mode for better accuracy on rotated text
uvx --from . paddleocr-md image.png --no-fast

# Use PP-OCRv5 for better accuracy (slower)
uvx --from . paddleocr-md image.png --ocr-version PP-OCRv5

Default Optimization Settings

The MCP server is optimized for low latency by default with these settings:

  • Fast mode enabled: Disables textline orientation classification (skips one model)
  • PP-OCRv4: Uses faster mobile models (PP-OCRv4_mobile_det, PP-OCRv4_mobile_rec)
  • High-Performance Inference (HPI): Automatically selects optimal inference backend
    • Can reduce latency by 40-73% (e.g., 73.1% reduction on PP-OCRv5_mobile_rec)
    • Supports Paddle Inference, OpenVINO, ONNX Runtime, TensorRT
  • Multi-threaded CPU: Uses all available CPU cores for parallel processing
  • MKL-DNN enabled: Intel CPU optimization for faster inference
  • Single image batch: rec_batch_num=1 for lowest latency per image
  • Auto GPU detection: Automatically uses GPU if available, falls back to CPU
    • GPU device selection: Uses first available GPU (gpu_id=0)
    • TensorRT support: Automatically enabled via HPI if TensorRT is installed
    • GPU memory: Uses default allocation (can be customized if needed)
  • Automatic image preprocessing: Optimizes images before OCR for better performance
    • Automatic downsampling: Resizes large images to maximum 1920px (maintains aspect ratio)
      • Reduces processing time for large images significantly
      • Uses high-quality LANCZOS resampling to preserve text quality
    • Image sharpening: Enhances text edges for improved OCR accuracy
      • Uses unsharp mask filter (radius=1, percent=150, threshold=3)
      • Additional sharpening enhancement (factor=1.2)
      • Makes text characters more distinct and easier to recognize
    • Format conversion: Automatically converts RGBA, LA, P modes to RGB with white background
    • Temporary file management: Automatically cleans up preprocessed images after OCR
  • Logging disabled: Reduces overhead by disabling verbose logging

GPU Performance:

  • When GPU is available, HPI automatically selects TensorRT backend for maximum performance
  • TensorRT can provide 2-3x speedup compared to standard GPU inference
  • First run with HPI may take longer to build the inference engine, but subsequent runs will be much faster

Requirements:

  • PaddleOCR >= 2.7.0 with all latest features supported (HPI, MKL-DNN, etc.)
  • No backward compatibility - requires latest PaddleOCR version
  • For maximum GPU performance: NVIDIA GPU with CUDA support and TensorRT (optional)
  • Sufficient GPU memory (typically 1-2GB for mobile models)

Customization Options

  1. --no-fast: Disable fast mode for better accuracy

    • Enables textline orientation classification
    • Better accuracy on rotated text, but slower
  2. --cpu: Force CPU mode

    • Overrides auto GPU detection
    • Explicitly use CPU
  3. --gpu: Force GPU mode

    • Will fail if GPU not available
    • Use when you want to ensure GPU usage
  4. --ocr-version PP-OCRv5: Use better accuracy version

    • PP-OCRv5 has better accuracy but slower than PP-OCRv4 (default)
    • Uses server models
  5. --max-size <pixels>: Adjust image processing size

    • Default: 640px
    • Larger values (e.g., 960, 1280) = better accuracy, slower
    • Smaller values (e.g., 480) = faster, may reduce accuracy
  6. --hpi: High-Performance Inference

    • Automatically selects best inference backend (Paddle Inference, OpenVINO, ONNX Runtime, TensorRT)
    • Requires HPI dependencies: paddleocr install_hpi_deps cpu/gpu
    • Best performance but requires additional setup

Examples

# Basic usage (uses all optimizations by default: fast + PP-OCRv4 + 640px + auto GPU)
uvx --from . paddleocr-md photo.jpg

# Process with custom output
uvx --from . paddleocr-md document.png -o extracted_text.md

# Better accuracy (slower) - disable fast mode and use PP-OCRv5
uvx --from . paddleocr-md image.png --no-fast --ocr-version PP-OCRv5 --max-size 960

# Force CPU mode
uvx --from . paddleocr-md image.png --cpu

# Use High-Performance Inference (requires HPI dependencies)
uvx --from . paddleocr-md image.png --hpi

Output Format

The tool generates a markdown file containing:

  • Source image path
  • List of detected text (one per line)

Example output (test_image.png.md):

# OCR Result

**Source Image:** `test_image.png`

---

- HelloPaddleOcR
- 10000C

Testing

Run tests using pytest:

# Install development dependencies
pip install -e ".[dev]"

# Run all tests
pytest

# Run tests with coverage
pytest --cov=paddleocr_cli --cov-report=html

# Run specific test file
pytest tests/test_mcp_server.py

# Run specific test class or function
pytest tests/test_mcp_server.py::TestGetOCR
pytest tests/test_mcp_server.py::TestGetOCR::test_get_ocr_default_language

The test suite includes:

  • OCR instance initialization and caching
  • Tool listing and definition
  • OCR tool calls with various parameters
  • Language parameter handling
  • File validation and error handling
  • Markdown output generation
  • Edge cases and error scenarios

License

MIT

from github.com/trotsky1997/PaddleOCR-MCP

Install Fast Paddleocr in Claude Desktop, Claude Code & Cursor

Recommended · one command, every IDE
unyly install fast-paddleocr-mcp

Installs into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.

First time? Get the CLI: curl -fsSL https://unyly.org/install | sh

Or configure manually

Run in your terminal:

claude mcp add fast-paddleocr-mcp -- uvx fast-paddleocr-mcp

FAQ

Is Fast Paddleocr MCP free?

Yes, Fast Paddleocr MCP is free — one-click install via Unyly at no cost.

Does Fast Paddleocr need an API key?

No, Fast Paddleocr runs without API keys or environment variables.

Is Fast Paddleocr hosted or self-hosted?

Self-hosted: the server runs locally on your machine via the install command above.

How do I install Fast Paddleocr in Claude Desktop, Claude Code or Cursor?

Open Fast Paddleocr on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.

Related MCPs

Compare Fast Paddleocr with

Not sure what to pick?

Find your stack in 60 seconds

Author?

Embed badge for your README

Browse similar

All development MCPs