Test-time adversarial detection and robustness for localizing humans using ultra wide band channel impulse responses
Kolli, Abhiram, Mirza, Muhammad Jehanzeb, Possegger, Horst, Bischof, Horst
–arXiv.org Artificial Intelligence
Keyless entry systems in cars are adopting neural networks for localizing its operators. Using test-time adversarial defences equip such systems with the ability to defend against adversarial attacks without prior training on adversarial samples. We propose a test-time adversarial example detector which detects the input adversarial example through quantifying the localized intermediate responses of a pre-trained neural network and confidence scores of an auxiliary softmax layer. Furthermore, in order to make the network robust, we extenuate the non-relevant features by non-iterative input sample clipping. Using our approach, mean performance over 15 levels of adversarial perturbations is increased by 55.33% for the fast gradient sign method (FGSM) and 6.3% for both the basic iterative method (BIM) and the projected gradient method (PGD).
arXiv.org Artificial Intelligence
Nov-10-2022