egg 3f41a33877 docs: update documentation for chart recognition enablement
Updates all project documentation to reflect that chart recognition
is now fully enabled with PaddlePaddle 3.2.1+.

Changes:
- README.md: Remove Known Limitations section about chart recognition,
  update tech stack and prerequisites to include PaddlePaddle 3.2.1+,
  add WSL CUDA configuration notes
- openspec/project.md: Add comprehensive chart recognition feature
  descriptions, update system requirements for GPU/CUDA support
- openspec/changes/add-gpu-acceleration-support/tasks.md: Mark task
  5.4 as completed with resolution details
- openspec/changes/add-gpu-acceleration-support/proposal.md: Update
  Known Issues section to show chart recognition is now resolved
- setup_dev_env.sh: Upgrade PaddlePaddle from 3.0.0 to 3.2.1+, add
  WSL CUDA library path configuration, add chart recognition API
  verification

All documentation now accurately reflects:
 Chart recognition fully enabled
 PaddlePaddle 3.2.1+ with fused_rms_norm_ext API
 WSL CUDA path auto-configuration
 Comprehensive PP-StructureV3 capabilities

🤖 Generated with [Claude Code](https://claude.com/claude-code)

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-16 19:04:30 +08:00
2025-11-12 22:53:17 +08:00
2025-11-12 22:53:17 +08:00
2025-11-12 22:53:17 +08:00
2nd
2025-11-12 22:54:56 +08:00
2025-11-12 22:53:17 +08:00
2025-11-12 22:53:17 +08:00

Tool_OCR

OCR Batch Processing System with Structure Extraction

A web-based solution to extract text, images, and document structure from multiple files efficiently using PaddleOCR-VL.

Features

  • 🔍 Multi-Language OCR: Support for 109 languages (Chinese, English, Japanese, Korean, etc.)
  • 📄 Document Structure Analysis: Intelligent layout analysis with PP-StructureV3
  • 🖼️ Image Extraction: Preserve document images alongside text content
  • 📑 Batch Processing: Process multiple files concurrently with progress tracking
  • 📤 Multiple Export Formats: TXT, JSON, Excel, Markdown with images, searchable PDF
  • 📋 Office Documents: DOC, DOCX, PPT, PPTX support via LibreOffice conversion
  • 🚀 GPU Acceleration: Automatic CUDA GPU detection with graceful CPU fallback
  • 🔧 Flexible Configuration: Rule-based output formatting
  • 🌐 Translation Ready: Reserved architecture for future translation features

Tech Stack

Backend

  • Framework: FastAPI 0.115.0
  • OCR Engine: PaddleOCR 3.0+ with PaddleOCR-VL and PP-StructureV3
  • Deep Learning: PaddlePaddle 3.2.1+ (GPU/CPU support)
  • Database: MySQL via SQLAlchemy
  • PDF Generation: Pandoc + WeasyPrint
  • Image Processing: OpenCV, Pillow, pdf2image
  • Office Conversion: LibreOffice (headless mode)

Frontend

  • Framework: React 19 with TypeScript
  • Build Tool: Vite 7
  • Styling: Tailwind CSS v4 + shadcn/ui
  • State Management: React Query + Zustand
  • HTTP Client: Axios

Prerequisites

  • OS: WSL2 Ubuntu 24.04
  • Python: 3.12+
  • Node.js: 24.x LTS
  • MySQL: External database server (provided)
  • GPU (Optional): NVIDIA GPU with CUDA 11.8+ for hardware acceleration
    • PaddlePaddle 3.2.1+ requires CUDA 11.8, 12.3, or 12.6+
    • WSL2 users: Ensure NVIDIA CUDA drivers are installed

Quick Start

# Run automated setup script
./setup_dev_env.sh

This script automatically:

  • Detects NVIDIA GPU and CUDA version (if available)
  • Installs Python development tools (pip, venv, build-essential)
  • Installs system dependencies (pandoc, LibreOffice, fonts, etc.)
  • Installs Node.js (via nvm)
  • Installs PaddlePaddle 3.2.1+ GPU version (if GPU detected) or CPU version
  • Configures WSL CUDA library paths (for WSL2 GPU users)
  • Installs other Python packages (PaddleOCR, PaddleX, etc.)
  • Installs frontend dependencies
  • Verifies GPU functionality and chart recognition API availability

2. Initialize Database

source venv/bin/activate
cd backend
alembic upgrade head
python create_test_user.py
cd ..

Default test user:

  • Username: admin
  • Password: admin123

3. Start Development Servers

Backend (Terminal 1):

./start_backend.sh

Frontend (Terminal 2):

./start_frontend.sh

4. Access Application

Project Structure

Tool_OCR/
├── backend/                 # FastAPI backend
│   ├── app/
│   │   ├── api/v1/         # API endpoints
│   │   ├── core/           # Configuration, database
│   │   ├── models/         # Database models
│   │   ├── services/       # Business logic
│   │   └── main.py         # Application entry point
│   ├── alembic/            # Database migrations
│   └── tests/              # Test suite
├── frontend/               # React frontend
│   ├── src/
│   │   ├── components/     # UI components
│   │   ├── pages/          # Page components
│   │   ├── services/       # API services
│   │   └── stores/         # State management
│   └── public/             # Static assets
├── .env.local              # Local development config
├── setup_dev_env.sh        # Environment setup script
├── start_backend.sh        # Backend startup script
└── start_frontend.sh       # Frontend startup script

Configuration

Main config file: .env.local

# Database
MYSQL_HOST=mysql.theaken.com
MYSQL_PORT=33306

# Application ports
BACKEND_PORT=8000
FRONTEND_PORT=5173

# Token expiration (minutes)
ACCESS_TOKEN_EXPIRE_MINUTES=1440  # 24 hours

# Supported file formats
ALLOWED_EXTENSIONS=png,jpg,jpeg,pdf,bmp,tiff,doc,docx,ppt,pptx

# OCR settings
OCR_LANGUAGES=ch,en,japan,korean
MAX_OCR_WORKERS=4

# GPU acceleration (optional)
FORCE_CPU_MODE=false         # Set to true to disable GPU even if available
GPU_MEMORY_FRACTION=0.8      # Fraction of GPU memory to use (0.0-1.0)
GPU_DEVICE_ID=0              # GPU device ID to use (0 for primary GPU)

GPU Acceleration

The system automatically detects and utilizes NVIDIA GPU hardware when available:

  • Auto-detection: Setup script detects GPU and installs appropriate PaddlePaddle version
  • Graceful fallback: If GPU is unavailable or fails, system automatically uses CPU mode
  • Performance: GPU acceleration provides 3-10x speedup for OCR processing
  • Configuration: Control GPU usage via .env.local environment variables
  • WSL2 CUDA Setup: For WSL2 users, CUDA library paths are automatically configured in ~/.bashrc

Chart Recognition: Requires PaddlePaddle 3.2.0+ for full PP-StructureV3 chart recognition capabilities (chart type detection, data extraction, axis/legend parsing). The setup script installs PaddlePaddle 3.2.1+ which includes all required APIs.

Check GPU status and chart recognition availability at: http://localhost:8000/health

API Endpoints

Authentication

  • POST /api/v1/auth/login - User login

File Management

  • POST /api/v1/upload - Upload files
  • POST /api/v1/ocr/process - Start OCR processing
  • GET /api/v1/batch/{id}/status - Get batch status

Results & Export

  • GET /api/v1/ocr/result/{id} - Get OCR result
  • GET /api/v1/export/pdf/{id} - Export as PDF

Full API documentation: http://localhost:8000/docs

Supported File Formats

  • Images: PNG, JPG, JPEG, BMP, TIFF
  • Documents: PDF
  • Office: DOC, DOCX, PPT, PPTX

Office files are automatically converted to PDF before OCR processing.

Development

Backend

source venv/bin/activate
cd backend

# Run tests
pytest

# Database migration
alembic revision --autogenerate -m "description"
alembic upgrade head

# Code formatting
black app/

Frontend

cd frontend

# Development server
npm run dev

# Build for production
npm run build

# Lint code
npm run lint

OpenSpec Workflow

This project follows OpenSpec for specification-driven development:

# View current changes
openspec list

# Validate specifications
openspec validate add-ocr-batch-processing

# View implementation tasks
cat openspec/changes/add-ocr-batch-processing/tasks.md

Roadmap

  • Phase 0: Environment setup
  • Phase 1: Core OCR backend (~98% complete)
  • Phase 2: Frontend development (~92% complete)
  • Phase 3: Testing & optimization
  • Phase 4: Deployment automation
  • Phase 5: Translation feature (future)

Documentation

License

Internal project use

Notes

  • First OCR run will download PaddleOCR models (~900MB)
  • Token expiration is set to 24 hours by default
  • Office conversion requires LibreOffice (installed via setup script)
  • Development environment: WSL2 Ubuntu 24.04 with Python venv
  • GPU acceleration: Automatically detected and enabled if NVIDIA GPU with CUDA 11.8+ is available
  • PaddlePaddle version: System uses PaddlePaddle 3.2.1+ which includes full chart recognition support
  • WSL GPU support: WSL2 CUDA library paths (/usr/lib/wsl/lib) are automatically configured in ~/.bashrc
  • Chart recognition: Fully enabled with PP-StructureV3 for chart type detection, data extraction, and structure analysis
  • GPU status and chart recognition availability can be checked via /health API endpoint
Description
No description provided
Readme 20 MiB
Languages
Python 84.1%
TypeScript 14.1%
Shell 1.4%
CSS 0.3%