--- title: DATDA — Hybrid Defense & Image Classification Model emoji: 🛡️ colorFrom: blue colorTo: green sdk: gradio app_file: app.py license: other tags: - computer-vision - image-classification - adversarial-attacks - adversarial-defense - gradio --- # DATDA — Hybrid Defense & Image Classification Model ## Overview DATDA (Dynamic Adversarial Training & Defense Architecture) is a cutting-edge hybrid model designed to simultaneously defend and classify images. It moves beyond standard single-model solutions by combining adaptive adversarial defenses with a dynamic model routing mechanism, ensuring high classification accuracy even when facing sophisticated adversarial attacks. ## Key Features - **Hybrid Defense & Classification**: Functions as both a robust protection mechanism and a high-accuracy classification engine within a unified framework. - **Smart Model Routing with DATDA Index**: Computes a unique DATDA Index (pre- and post-defense) to intelligently gauge attack severity. This index dynamically selects the optimal CNN model for the image: - Robust Legacy Models (e.g., VGG16) for highly corrupted images. - Advanced Hybrid CNNs for clean or partially defended images. - **Adaptive Purification Paths**: A multi-strategy defense that actively removes adversarial noise using a variety of complementary techniques: - Spectral Suppression & DCT Low-Pass Filtering - Bilateral/Median Smoothing & Total Variation Denoising - Gradient Shielding & Random Augmentation - **Secondary Ultra-Defense (SDATDA)**: An optional, intensified defense layer that automatically activates for images with a high post-defense index. It combines momentum, gradient, and reverse techniques to neutralize deep-seated perturbations. - **Gradio & Hugging Face Ready**: Designed for seamless integration into interactive web demos or research pipelines for immediate testing and deployment. ## Installation Clone the repository and install as a Python package. ```bash git clone https://github.com/yourusername/DATDA.git cd DATDA pip install . ``` Install using PIP ```bash pip install datda ``` ## Quick Usage Defend and classify an image in four simple steps. ```python from DATDA import DATDA, SDATDA, DATDAIndex from PIL import Image # 1. Load Image and Compute Pre-defense Index img = Image.open("example.png") index_calc = DATDAIndex() pre_index = index_calc.compute_index(img) print(f"Pre-defense DATDA Index: {pre_index}") # 2. Apply Primary Hybrid Defense & Classification datda = DATDA() defended_img, predicted_label = datda(img) # 3. Compute Post-defense Index post_index = index_calc.compute_index(defended_img) print(f"Post-defense DATDA Index: {post_index}") # 4. Optional: Invoke Secondary Ultra-Defense (SDATDA) # Use a threshold to decide if extra defense is needed if post_index > 0.5: print("Activation SDATDA...") sdatda = SDATDA() cleaned_img = sdatda(defended_img) _, predicted_label = datda(cleaned_img) # Re-classify the ultra-cleaned image print(f"Final Predicted Label: {predicted_label}") ``` ## Project Structure ``` DATDA/ ├── __init__.py ├── datda_defense.py # Core Primary Hybrid Defense + Classification Logic ├── sdatda_defense.py # Secondary Ultra-Defense Implementation ├── datda_index.py # DATDA Index Calculator for Smart Routing ├── app.py # Example Gradio Web UI ├── setup.py └── README.md ``` ## Citation & Academic Use This library is intended for academic and research purposes only. If you use DATDA in a publication, please cite the author: ```bibtex @misc{akbar2025datda, author = {Qamar Muneer Akbar}, title = {DATDA: Hybrid Defense & Image Classification}, year = {2025}, url = {https://www.ftiuae.com} } ``` ## Fun Fact The name **DATDA** was inspired by the *Defense Against the Dark Arts* at Hogwarts. --- Made by **Qamar Muneer Akbar** and pinch of magic by Gemini2.5-Pro