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    Course Outline
Introduction to Artificial Intelligence and Image Processing
- What is Artificial Intelligence?
 - Machine Learning vs. Deep Learning
 - AI applications in law enforcement
 
Basics of Image Processing
- Digital images: pixels, resolution, and formats
 - Image manipulation (brightness, contrast, resizing, cropping)
 - Introduction to OpenCV for image processing
 
Understanding Neural Networks
- Basics of neural networks and how they work
 - Introduction to Convolutional Neural Networks (CNNs) for image data
 
Facial Features Detection
- How AI models identify and differentiate facial features
 - Using pre-trained models for face detection
 
Data Collection and Preparation
- Importance of quality datasets for training
 - Data augmentation techniques to improve model performance
 
Training a Facial Recognition Model
- Overview of TensorFlow and Keras for deep learning
 - Step-by-step guide to training a facial recognition model
 
Model Evaluation and Testing
- Metrics to evaluate facial recognition accuracy
 - Techniques to improve model performance
 
Deployment of Facial Recognition Tools
- Building a simple application interface for end-users
 - Integrating the model into law enforcement workflows
 
Ethical and Privacy Concerns
- Legal implications of using facial recognition in law enforcement
 - Best practices to ensure ethical use
 
Advanced Tools and Future Trends
- Introduction to cloud-based facial recognition APIs (e.g., AWS Rekognition, Azure Face API)
 - Exploring advanced neural network architectures for facial recognition
 
Summary and Next Steps
Requirements
- Basic computer literacy
 
Audience
- Law enforcement personnel
 
             21 Hours