Attack Assessment and Augmented Identity Recognition for Human Skeleton Data
Joseph G. Zalameda, Megan A. Witherow, Alexander M. Glandon, Jose Aguilera, Khan M. Iftekharuddin

TL;DR
This paper introduces Attack-AAIRS, a framework that enhances the robustness of skeleton-based person identification models against adversarial attacks by using GAN-generated synthetic attack samples for training.
Contribution
It proposes a novel method combining GANs with AAIRS to assess and improve model robustness against unseen adversarial attacks in small data settings.
Findings
Increased robustness to multiple adversarial attacks including FGSM, PGD, and BIM.
Synthetic attack samples are of comparable quality to real benign samples.
Model robustness improved without sacrificing accuracy on real data.
Abstract
Machine learning models trained on small data sets for security applications are especially vulnerable to adversarial attacks. Person identification from LiDAR based skeleton data requires time consuming and expensive data acquisition for each subject identity. Recently, Assessment and Augmented Identity Recognition for Skeletons (AAIRS) has been used to train Hierarchical Co-occurrence Networks for Person Identification (HCN-ID) with small LiDAR based skeleton data sets. However, AAIRS does not evaluate robustness of HCN-ID to adversarial attacks or inoculate the model to defend against such attacks. Popular perturbation-based approaches to generating adversarial attacks are constrained to targeted perturbations added to real training samples, which is not ideal for inoculating models with small training sets. Thus, we propose Attack-AAIRS, a novel addition to the AAIRS framework.…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Advanced Neural Network Applications · Domain Adaptation and Few-Shot Learning
