SECUREAS: A VULNERABILITY ASSESSMENT SYSTEM FOR DEEP NEURAL NETWORK BASED ON ADVERSARIAL EXAMPLES

SecureAS: A Vulnerability Assessment System for Deep Neural Network Based on Adversarial Examples

SecureAS: A Vulnerability Assessment System for Deep Neural Network Based on Adversarial Examples

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Deep neural network (DNN) has been recently applied to many safety-critical environments.Unfortunately, recent research has proven that DNN can be vulnerable to well-designed examples, called adversarial examples.Adversarial examples can easily fool a well-performed deep learning model with little perturbations imperceptible to humans.

In this paper, to tackle the DNN security issue, we propose a DVD Player Model Adversarial Score (MAS) index to evaluate the vulnerability of a Booster Seats deep neural network, and introduce a deep learning vulnerability assessment system (SecureAS) using adversarial samples to assess the vulnerability and risk of a trained DNN in a blackbox way.We also present two adversary algorithms (FGNM and PINM) that provide better adversary images with the similar attack effect compared to existing approaches like FGSM and BIM.Our experimental results confirm the effectiveness of MAS algorithm, SecureAS, FGNM and PINM.

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