Litcius/Paper detail

An autonomous decision-making framework for gait recognition systems against adversarial attack using reinforcement learning

Muazzam Maqsood, Sadaf Yasmin, Saira Gillani, Farhan Aadil, Irfan Mehmood, Seungmin Rho, Sang-Soo Yeo

2022ISA Transactions20 citationsDOIOpen Access PDF

Abstract

Gait identification based on Deep Learning (DL) techniques has recently emerged as biometric technology for surveillance. We leveraged the vulnerabilities and decision-making abilities of the DL model in gait-based autonomous surveillance systems when attackers have no access to underlying model gradients/structures using a patch-based black-box adversarial attack with Reinforcement Learning (RL). These automated surveillance systems are secured, blocking the attacker's access. Therefore, the attack can be conducted in an RL framework where the agent's goal is determining the optimal image location, causing the model to perform incorrectly when perturbed with random pixels. Furthermore, the proposed adversarial attack presents encouraging results (maximum success rate = 77.59%). Researchers should explore system resilience scenarios (e.g., when attackers have no system access) before using these models in surveillance applications.

Topics & Concepts

Reinforcement learningBiometricsComputer scienceAdversarial systemArtificial intelligenceGaitComputer securityResilience (materials science)Identification (biology)Machine learningAccess controlAttack modelThermodynamicsPhysicsBotanyBiologyPhysiologyAdversarial Robustness in Machine LearningAnomaly Detection Techniques and ApplicationsGait Recognition and Analysis