- Added extract_meaning_kernels.py for processing PDF diagrams - Extracts text using OCR (Tesseract) when available - Analyzes diagram structure (type, dimensions, orientation) - Generates structured meaning kernels with metadata - Outputs JSON (machine-readable) and Markdown (human-readable) - Includes test pipeline and documentation - Supports single files and batch processing Pipeline components: - DiagramProcessor: Main processing engine - MeaningKernel: Structured kernel representation - PDF to image conversion - OCR text extraction - Structure analysis - Kernel generation with confidence scoring Acceptance criteria met: ✓ Processes academic PDF diagrams ✓ Extracts structured text meaning kernels ✓ Generates machine-readable JSON output ✓ Includes human-readable reports ✓ Supports batch processing ✓ Provides confidence scoring
26 lines
477 B
Plaintext
26 lines
477 B
Plaintext
# Multimodal Meaning Kernel Extraction Pipeline
|
|
# Required Python dependencies
|
|
|
|
# Image processing
|
|
Pillow>=10.0.0
|
|
|
|
# OCR (Optical Character Recognition)
|
|
pytesseract>=0.3.10
|
|
|
|
# PDF processing
|
|
pdf2image>=1.16.3
|
|
|
|
# Optional: Enhanced computer vision
|
|
# opencv-python>=4.8.0
|
|
# numpy>=1.24.0
|
|
|
|
# Optional: Machine learning for diagram classification
|
|
# scikit-learn>=1.3.0
|
|
# torch>=2.0.0
|
|
# torchvision>=0.15.0
|
|
|
|
# Development and testing
|
|
# pytest>=7.4.0
|
|
# black>=23.0.0
|
|
# flake8>=6.0.0
|