Combatting Adversarial Attacks through Denoising and Dimensionality Reduction: A Cascaded Autoencoder Approach
Sahay, Rajeev, Mahfuz, Rehana, Gamal, Aly El
Abstract--Machine Learning models are vulnerable to adversarial attacksthat rely on perturbing the input data. This work proposes a novel strategy using Autoencoder Deep Neural Networks to defend a machine learning model against two gradient-based attacks: The Fast Gradient Sign attack and Fast Gradient attack. First we use an autoencoder to denoise the test data, which is trained with both clean and corrupted data. Then, we reduce the dimension of the denoised data using the hidden layer representation of another autoencoder. We perform this experiment for multiple values of the bound of adversarial perturbations, and consider different numbers of reduced dimensions. When the test data is preprocessed using this cascaded pipeline, the tested deep neural network classifier yields a much higher accuracy, thus mitigating the effect of the adversarial perturbation. I. INTRODUCTION State of the art machine learning algorithms have revolutionized automatedclassification technologies in various fields like computer vision, natural language processing, and biometric information security [1] [2] [3].
Dec-7-2018
- Country:
- North America > United States (0.46)
- Genre:
- Research Report > New Finding (0.46)
- Industry:
- Information Technology > Security & Privacy (1.00)
- Technology: