Attack Assessment and Augmented Identity Recognition for Human Skeleton Data
arXiv cs.LG / 3/26/2026
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Key Points
- The paper identifies that person identification from LiDAR-based skeleton data trained on small security datasets is vulnerable to adversarial attacks and that the existing AAIRS/HCN-ID approach does not evaluate or defend against such threats.
- It proposes Attack-AAIRS, which augments robustness by using a GAN to learn and generate adversarial examples (rather than relying only on limited perturbations of real training samples).
- The generated adversarial samples are used to inoculate/train HCN-ID, improving robustness across multiple unseen attack types including FGSM, PGD, Additive Gaussian Noise, MI-FGSM, and BIM.
- Ten-fold cross-validation shows that robustness improves without degrading final test accuracy on real data, and a synthetic data quality score suggests the adversarial samples remain comparable to benign synthetic data from AAIRS.
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