CVMar 18

Noise-Aware Misclassification Attack Detection in Collaborative DNN Inference

arXiv:2603.1791413.2h-index: 20
Predicted impact top 94% in CV · last 90 daysOriginality Incremental advance
AI Analysis

This addresses security vulnerabilities in edge-AI systems for resource-constrained devices, though it is incremental with limitations noted.

The paper tackles the problem of detecting stealthy misclassification attacks in collaborative DNN inference under noisy conditions, achieving up to 90% AUROC in detection accuracy.

Collaborative inference of object classification Deep neural Networks (DNNs) where resource-constrained end-devices offload partially processed data to remote edge servers to complete end-to-end processing, is becoming a key enabler of edge-AI. However, such edge-offloading is vulnerable to malicious data injections leading to stealthy misclassifications that are tricky to detect, especially in the presence of environmental noise. In this paper, we propose a semi-gray-box and noise- aware anomaly detection framework fueled by a variational autoencoder (VAE) to capture deviations caused by adversarial manipulation. The proposed framework incorporates a robust noise-aware feature that captures the characteristic behavior of environmental noise to improve detection accuracy while reducing false alarm rates. Our evaluation with popular object classification DNNs demonstrate the robustness of the proposed detection (up to 90% AUROC across DNN configurations) under realistic noisy conditions while revealing limitations caused by feature similarity and elevated noise levels.

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