egg ad5c8be0a3 fix: add V2 file upload endpoint and update frontend to v2 API
Add missing file upload functionality to V2 API that was removed
during V1 to V2 migration. Update frontend to use v2 API endpoints.

Backend changes:
- Add /api/v2/upload endpoint in main.py for file uploads
- Import necessary dependencies (UploadFile, hashlib, TaskFile)
- Upload endpoint creates task, saves file, and returns task info
- Add UploadResponse schema to task.py schemas
- Update tasks router imports for consistency

Frontend changes:
- Update API_VERSION from 'v1' to 'v2' in api.ts
- Update UploadResponse type to match V2 API response format
  (task_id instead of batch_id, single file instead of array)

This fixes the 404 error when uploading files from the frontend.

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

Co-Authored-By: Claude <noreply@anthropic.com>
2025-11-16 19:13:22 +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%