4.3 KiB
4.3 KiB
Smart Farm Photo Keyword Tagging AI - Usage Guide
🚀 Quick Start
1. Installation
# Install dependencies
python3 -m pip install -r requirements.txt
2. Prepare Your Photos
- Place agricultural photos in
data/raw/directory - Supported formats: JPG, JPEG, PNG, TIFF, BMP
- Any image size (system will handle resizing)
3. Run the System
# Basic usage - process all images in data/raw/
python3 src/main.py
# Specify custom directories
python3 src/main.py --input /path/to/your/photos --output /path/to/results
4. View Results
- Results saved as CSV in
outputs/directory - Filename format:
agricultural_keywords_YYYYMMDD_HHMMSS.csv
📊 Output Format
The system generates a CSV file with these columns:
| Column | Description | Example |
|---|---|---|
filename |
Original image filename | farmer_cornfield.jpg |
human_keywords |
Manual keywords (for comparison) | farmer, corn, agriculture |
ai_keywords |
AI-generated keywords | farmer, corn, field, agriculture, male |
ai_title |
Descriptive title for stock photos | Farmer working in cornfield |
location |
GPS location if available | Iowa or GPS Location Available |
🔧 Advanced Usage
Batch Processing
The system is designed for batch processing:
- Handles 500+ images efficiently
- Processes images sequentially to manage memory
- Progress tracking during processing
Custom Input Directories
# Process photos from custom directory
python3 src/main.py --input /Users/yourname/farm_photos --output /Users/yourname/results
Using the Jupyter Notebook
# Start Jupyter
jupyter notebook
# Open notebooks/agricultural_keyword_analysis.ipynb
# Run all cells for interactive analysis
📈 Performance
Expected Processing Times:
- Setup: ~30 seconds (model loading)
- Per Image: ~2-5 seconds
- Batch of 100: ~5-10 minutes
- Batch of 500: ~20-40 minutes
System Requirements:
- RAM: 4GB minimum, 8GB recommended
- Storage: 2GB for model files
- CPU: Any modern processor (GPU optional)
🎯 Keyword Quality
What the AI Recognizes Well:
- ✅ People (farmers, workers)
- ✅ Animals (cows, pigs, chickens)
- ✅ Equipment (tractors, tools)
- ✅ Crops (corn, wheat, vegetables)
- ✅ Settings (fields, barns, farms)
Current Limitations:
- ⚠️ May not distinguish farmer vs rancher perfectly
- ⚠️ Gender identification needs improvement
- ⚠️ Location extraction limited without GPS data
- ⚠️ Some agriculture-specific terms may be generic
🛠️ Troubleshooting
Common Issues:
"No images found"
- Check that images are in
data/raw/directory - Verify file extensions are supported
- System will create sample data if no images found
"Model loading error"
- Ensure internet connection for first-time model download
- Check available disk space (2GB needed)
- Restart if download was interrupted
"Out of memory"
- Process smaller batches
- Close other applications
- Consider using a machine with more RAM
Getting Help:
- Check the error message in terminal
- Verify all dependencies are installed
- Ensure input directory contains valid image files
📝 Example Workflow
# 1. Prepare your photos
mkdir -p data/raw
cp /path/to/your/farm/photos/* data/raw/
# 2. Run processing
python3 src/main.py
# 3. Check results
ls outputs/
cat outputs/agricultural_keywords_*.csv
# 4. Analyze with notebook
jupyter notebook notebooks/agricultural_keyword_analysis.ipynb
🔄 Integration with Existing Workflow
For Stock Photo Businesses:
- Upload: Place new photos in
data/raw/ - Process: Run batch processing monthly
- Review: Check AI keywords against human keywords
- Export: Use CSV for your photo management system
Scaling Up:
- Process 1,000+ photos by running multiple batches
- Monitor processing time and adjust batch sizes
- Consider upgrading hardware for faster processing
📋 Next Steps for Production
- Fine-tune model on your 30,000 tagged photos
- Add location services for GPS coordinate conversion
- Implement quality scoring for keyword confidence
- Create web interface for easier use
- Add batch scheduling for automated processing
Need help? Check the notebook examples or review the code documentation in src/ directory.