CP-uniGuard: A Unified, Probability-Agnostic, and Adaptive Framework for Malicious Agent Detection and Defense in Multi-Agent Embodied Perception Systems
Senkang Hu, Yihang Tao, Guowen Xu, Xinyuan Qian, Yiqin Deng, Xianhao Chen, Sam Tak Wu Kwong, Yuguang Fang

TL;DR
CP-uniGuard is a novel adaptive framework that detects and defends against malicious agents in collaborative perception systems for autonomous driving, using a probability-agnostic consensus approach and dynamic thresholding.
Contribution
It introduces a unified, probability-agnostic defense framework with PASAC, CCLoss, and adaptive thresholds for robust malicious agent detection in multi-agent perception.
Findings
Effective detection of malicious agents demonstrated in experiments.
Improved perception robustness in dynamic environments.
Framework adaptable to various perception tasks.
Abstract
Collaborative Perception (CP) has been shown to be a promising technique for multi-agent autonomous driving and multi-agent robotic systems, where multiple agents share their perception information to enhance the overall perception performance and expand the perception range. However, in CP, an ego agent needs to receive messages from its collaborators, which makes it vulnerable to attacks from malicious agents. To address this critical issue, we propose a unified, probability-agnostic, and adaptive framework, namely, CP-uniGuard, which is a tailored defense mechanism for CP deployed by each agent to accurately detect and eliminate malicious agents in its collaboration network. Our key idea is to enable CP to reach a consensus rather than a conflict against an ego agent's perception results. Based on this idea, we first develop a probability-agnostic sample consensus (PASAC) method to…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Network Security and Intrusion Detection · Adversarial Robustness in Machine Learning
