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"""
Demo script for signature verification model.
"""

import torch
import numpy as np
import cv2
from PIL import Image
import matplotlib.pyplot as plt
import os
import sys
from pathlib import Path

# Add src to path
sys.path.append(str(Path(__file__).parent / 'src'))

from src.models.siamese_network import SignatureVerifier
from src.data.preprocessing import SignaturePreprocessor
from src.evaluation.evaluator import SignatureEvaluator
from src.training.trainer import SignatureTrainer, SignatureDataset
from src.data.augmentation import SignatureAugmentationPipeline


def create_sample_signatures():
    """Create sample signature images for demonstration."""
    print("Creating sample signature images...")
    
    # Create sample directory
    os.makedirs('data/samples', exist_ok=True)
    
    # Create some sample signature images
    def create_signature_image(filename, style='normal'):
        """Create a sample signature image."""
        # Create a white canvas
        img = np.ones((224, 224, 3), dtype=np.uint8) * 255
        
        if style == 'normal':
            # Draw a simple signature-like curve
            points = [(50, 100), (80, 90), (120, 95), (160, 85), (180, 100)]
            for i in range(len(points) - 1):
                cv2.line(img, points[i], points[i + 1], (0, 0, 0), 3)
            
            # Add some flourishes
            cv2.ellipse(img, (60, 110), (20, 10), 0, 0, 180, (0, 0, 0), 2)
            cv2.ellipse(img, (170, 110), (15, 8), 0, 0, 180, (0, 0, 0), 2)
        
        elif style == 'cursive':
            # Draw a more cursive signature
            points = [(40, 120), (70, 100), (100, 110), (130, 95), (160, 105), (190, 100)]
            for i in range(len(points) - 1):
                cv2.line(img, points[i], points[i + 1], (0, 0, 0), 4)
            
            # Add loops and curves
            cv2.ellipse(img, (50, 130), (25, 15), 0, 0, 180, (0, 0, 0), 2)
            cv2.ellipse(img, (180, 115), (20, 12), 0, 0, 180, (0, 0, 0), 2)
        
        elif style == 'simple':
            # Draw a simple straight signature
            cv2.line(img, (50, 100), (180, 100), (0, 0, 0), 3)
            cv2.line(img, (50, 110), (180, 110), (0, 0, 0), 2)
            cv2.line(img, (50, 120), (180, 120), (0, 0, 0), 2)
        
        # Add some noise to make it more realistic
        noise = np.random.normal(0, 10, img.shape).astype(np.uint8)
        img = np.clip(img.astype(np.int16) + noise, 0, 255).astype(np.uint8)
        
        # Save the image
        cv2.imwrite(filename, cv2.cvtColor(img, cv2.COLOR_RGB2BGR))
        return img
    
    # Create sample signatures
    signatures = [
        ('john_doe_1.png', 'normal'),
        ('john_doe_2.png', 'normal'),
        ('john_doe_3.png', 'cursive'),
        ('jane_smith_1.png', 'simple'),
        ('jane_smith_2.png', 'simple'),
        ('jane_smith_3.png', 'cursive'),
        ('bob_wilson_1.png', 'cursive'),
        ('bob_wilson_2.png', 'cursive'),
        ('bob_wilson_3.png', 'normal'),
        ('alice_brown_1.png', 'simple'),
        ('alice_brown_2.png', 'simple'),
        ('alice_brown_3.png', 'normal'),
    ]
    
    for filename, style in signatures:
        create_signature_image(f'data/samples/{filename}', style)
    
    print(f"Created {len(signatures)} sample signature images in data/samples/")
    return signatures


def create_training_data():
    """Create training data pairs for demonstration."""
    print("Creating training data pairs...")
    
    # Define genuine pairs (same person)
    genuine_pairs = [
        ('data/samples/john_doe_1.png', 'data/samples/john_doe_2.png', 1),
        ('data/samples/john_doe_1.png', 'data/samples/john_doe_3.png', 1),
        ('data/samples/john_doe_2.png', 'data/samples/john_doe_3.png', 1),
        ('data/samples/jane_smith_1.png', 'data/samples/jane_smith_2.png', 1),
        ('data/samples/jane_smith_1.png', 'data/samples/jane_smith_3.png', 1),
        ('data/samples/jane_smith_2.png', 'data/samples/jane_smith_3.png', 1),
        ('data/samples/bob_wilson_1.png', 'data/samples/bob_wilson_2.png', 1),
        ('data/samples/bob_wilson_1.png', 'data/samples/bob_wilson_3.png', 1),
        ('data/samples/bob_wilson_2.png', 'data/samples/bob_wilson_3.png', 1),
        ('data/samples/alice_brown_1.png', 'data/samples/alice_brown_2.png', 1),
        ('data/samples/alice_brown_1.png', 'data/samples/alice_brown_3.png', 1),
        ('data/samples/alice_brown_2.png', 'data/samples/alice_brown_3.png', 1),
    ]
    
    # Define forged pairs (different people)
    forged_pairs = [
        ('data/samples/john_doe_1.png', 'data/samples/jane_smith_1.png', 0),
        ('data/samples/john_doe_2.png', 'data/samples/bob_wilson_1.png', 0),
        ('data/samples/john_doe_3.png', 'data/samples/alice_brown_1.png', 0),
        ('data/samples/jane_smith_1.png', 'data/samples/bob_wilson_2.png', 0),
        ('data/samples/jane_smith_2.png', 'data/samples/alice_brown_2.png', 0),
        ('data/samples/jane_smith_3.png', 'data/samples/john_doe_1.png', 0),
        ('data/samples/bob_wilson_1.png', 'data/samples/alice_brown_3.png', 0),
        ('data/samples/bob_wilson_2.png', 'data/samples/john_doe_2.png', 0),
        ('data/samples/bob_wilson_3.png', 'data/samples/jane_smith_1.png', 0),
        ('data/samples/alice_brown_1.png', 'data/samples/john_doe_3.png', 0),
        ('data/samples/alice_brown_2.png', 'data/samples/bob_wilson_1.png', 0),
        ('data/samples/alice_brown_3.png', 'data/samples/jane_smith_2.png', 0),
    ]
    
    # Combine all pairs
    all_pairs = genuine_pairs + forged_pairs
    
    print(f"Created {len(genuine_pairs)} genuine pairs and {len(forged_pairs)} forged pairs")
    return all_pairs


def demo_basic_verification():
    """Demonstrate basic signature verification."""
    print("\n" + "="*60)
    print("BASIC SIGNATURE VERIFICATION DEMO")
    print("="*60)
    
    # Create sample data
    signatures = create_sample_signatures()
    data_pairs = create_training_data()
    
    # Initialize components
    preprocessor = SignaturePreprocessor()
    verifier = SignatureVerifier(feature_extractor='resnet18', feature_dim=512)
    
    print("\nTesting signature verification on sample pairs...")
    
    # Test a few pairs
    test_pairs = [
        ('data/samples/john_doe_1.png', 'data/samples/john_doe_2.png', 'Genuine'),
        ('data/samples/john_doe_1.png', 'data/samples/jane_smith_1.png', 'Forged'),
        ('data/samples/jane_smith_1.png', 'data/samples/jane_smith_2.png', 'Genuine'),
        ('data/samples/bob_wilson_1.png', 'data/samples/alice_brown_1.png', 'Forged'),
    ]
    
    for sig1_path, sig2_path, expected in test_pairs:
        try:
            similarity, is_genuine = verifier.verify_signatures(sig1_path, sig2_path)
            result = "✓ GENUINE" if is_genuine else "✗ FORGED"
            correct = "✓" if (is_genuine and expected == "Genuine") or (not is_genuine and expected == "Forged") else "✗"
            
            print(f"{sig1_path} vs {sig2_path}")
            print(f"  Expected: {expected}")
            print(f"  Predicted: {result}")
            print(f"  Similarity: {similarity:.4f}")
            print(f"  Correct: {correct}")
            print()
            
        except Exception as e:
            print(f"Error processing {sig1_path} vs {sig2_path}: {e}")
    
    return verifier, preprocessor, data_pairs


def demo_training():
    """Demonstrate model training."""
    print("\n" + "="*60)
    print("MODEL TRAINING DEMO")
    print("="*60)
    
    # Create sample data
    signatures = create_sample_signatures()
    data_pairs = create_training_data()
    
    # Split data into train/val
    np.random.shuffle(data_pairs)
    split_idx = int(0.8 * len(data_pairs))
    train_pairs = data_pairs[:split_idx]
    val_pairs = data_pairs[split_idx:]
    
    print(f"Training pairs: {len(train_pairs)}")
    print(f"Validation pairs: {len(val_pairs)}")
    
    # Initialize components
    preprocessor = SignaturePreprocessor()
    augmenter = SignatureAugmentationPipeline()
    
    # Create datasets
    train_dataset = SignatureDataset(train_pairs, preprocessor, augmenter, is_training=True)
    val_dataset = SignatureDataset(val_pairs, preprocessor, None, is_training=False)
    
    # Create data loaders
    train_loader = torch.utils.data.DataLoader(train_dataset, batch_size=4, shuffle=True)
    val_loader = torch.utils.data.DataLoader(val_dataset, batch_size=4, shuffle=False)
    
    # Initialize model and trainer
    from src.models.siamese_network import SiameseNetwork
    model = SiameseNetwork(feature_extractor='resnet18', feature_dim=512)
    
    trainer = SignatureTrainer(
        model=model,
        learning_rate=1e-4,
        loss_type='contrastive'
    )
    
    print("\nStarting training...")
    print("Note: This is a demo with limited data. In practice, you would need much more data.")
    
    # Train for a few epochs
    history = trainer.train(
        train_loader=train_loader,
        val_loader=val_loader,
        num_epochs=5,  # Reduced for demo
        save_best=True,
        patience=3
    )
    
    print("\nTraining completed!")
    print(f"Final training loss: {history['train_losses'][-1]:.4f}")
    print(f"Final validation loss: {history['val_losses'][-1]:.4f}")
    print(f"Final training accuracy: {history['train_accuracies'][-1]:.4f}")
    print(f"Final validation accuracy: {history['val_accuracies'][-1]:.4f}")
    
    # Clean up
    trainer.close()
    
    return model, preprocessor, val_pairs


def demo_evaluation():
    """Demonstrate model evaluation."""
    print("\n" + "="*60)
    print("MODEL EVALUATION DEMO")
    print("="*60)
    
    # Create sample data
    signatures = create_sample_signatures()
    data_pairs = create_training_data()
    
    # Initialize components
    preprocessor = SignaturePreprocessor()
    verifier = SignatureVerifier(feature_extractor='resnet18', feature_dim=512)
    
    # Create evaluator
    evaluator = SignatureEvaluator(verifier, preprocessor)
    
    print("Evaluating model performance...")
    
    # Basic evaluation
    metrics = evaluator.evaluate_dataset(
        data_pairs, 
        threshold=0.5, 
        batch_size=4,
        save_results=True,
        results_dir='evaluation_results'
    )
    
    print(f"\nEvaluation Results:")
    print(f"Accuracy: {metrics['accuracy']:.4f}")
    print(f"Precision: {metrics['precision']:.4f}")
    print(f"Recall: {metrics['recall']:.4f}")
    print(f"F1-Score: {metrics['f1_score']:.4f}")
    print(f"ROC AUC: {metrics['roc_auc']:.4f}")
    
    # Threshold optimization
    print("\nOptimizing threshold...")
    opt_metrics = evaluator.evaluate_with_threshold_optimization(
        data_pairs, 
        metric='f1_score',
        batch_size=4
    )
    
    print(f"Optimized threshold: {opt_metrics['optimized_threshold']:.4f}")
    print(f"Optimized F1-Score: {opt_metrics['f1_score']:.4f}")
    
    return metrics, opt_metrics


def demo_feature_extraction():
    """Demonstrate feature extraction."""
    print("\n" + "="*60)
    print("FEATURE EXTRACTION DEMO")
    print("="*60)
    
    # Create sample data
    signatures = create_sample_signatures()
    
    # Initialize components
    preprocessor = SignaturePreprocessor()
    verifier = SignatureVerifier(feature_extractor='resnet18', feature_dim=512)
    
    print("Extracting features from sample signatures...")
    
    # Extract features for a few signatures
    signature_files = [
        'data/samples/john_doe_1.png',
        'data/samples/john_doe_2.png',
        'data/samples/jane_smith_1.png',
        'data/samples/bob_wilson_1.png'
    ]
    
    features = {}
    for sig_file in signature_files:
        try:
            features[sig_file] = verifier.extract_signature_features(sig_file)
            print(f"Extracted features for {sig_file}: shape {features[sig_file].shape}")
        except Exception as e:
            print(f"Error extracting features from {sig_file}: {e}")
    
    # Compute similarities between features
    print("\nComputing similarities between extracted features...")
    sig_files = list(features.keys())
    for i in range(len(sig_files)):
        for j in range(i+1, len(sig_files)):
            sig1, sig2 = sig_files[i], sig_files[j]
            feat1, feat2 = features[sig1], features[sig2]
            
            # Compute cosine similarity
            # Flatten features to 1D if needed
            feat1_flat = feat1.flatten()
            feat2_flat = feat2.flatten()
            similarity = np.dot(feat1_flat, feat2_flat) / (np.linalg.norm(feat1_flat) * np.linalg.norm(feat2_flat))
            
            print(f"{sig1} vs {sig2}: {similarity:.4f}")
    
    return features


def main():
    """Main demo function."""
    print("E-Signature Verification Model Demo")
    print("="*60)
    
    try:
        # Demo 1: Basic verification
        verifier, preprocessor, data_pairs = demo_basic_verification()
        
        # Demo 2: Feature extraction
        features = demo_feature_extraction()
        
        # Demo 3: Training (optional - comment out if you want to skip)
        print("\nNote: Skipping training demo to save time. Uncomment the next line to run it.")
        # model, preprocessor, val_pairs = demo_training()
        
        # Demo 4: Evaluation
        metrics, opt_metrics = demo_evaluation()
        
        print("\n" + "="*60)
        print("DEMO COMPLETED SUCCESSFULLY!")
        print("="*60)
        print("\nNext steps:")
        print("1. Collect more signature data for better training")
        print("2. Experiment with different model architectures")
        print("3. Tune hyperparameters for your specific use case")
        print("4. Deploy the model for production use")
        print("\nCheck the 'evaluation_results' directory for detailed evaluation reports.")
        
    except Exception as e:
        print(f"Demo failed with error: {e}")
        import traceback
        traceback.print_exc()


if __name__ == "__main__":
    main()