NDSS 2025 – Interventional Root Cause Analysis Of Failures In Multi-Sensor Fusion Perception Systems
研究提出了一种名为干预性根本原因分析(IRCA)的方法,用于解决多传感器融合(MSF)感知系统中的故障问题。该方法通过构建分层结构因果模型(H-SCM),利用有向无环图(DAG)结构分析多模块故障与系统失败之间的因果关系,并采用分而治之的算法定位干预目标。实验表明,IRCA在真实和合成故障场景中均表现出高准确性(平均F1分数超过95%),有效提升了自动驾驶系统的安全性。 2025-12-19 20:0:0 Author: securityboulevard.com(查看原文) 阅读量:3 收藏

Session 6C: Sensor Attacks

Authors, Creators & Presenters: Shuguang Wang (City University of Hong Kong), Qian Zhou (City University of Hong Kong), Kui Wu (University of Victoria), Jinghuai Deng (City University of Hong Kong), Dapeng Wu (City University of Hong Kong), Wei-Bin Lee (Information Security Center, Hon Hai Research Institute), Jianping Wang (City University of Hong Kong)
PAPER
NDSS 2025 – Interventional Root Cause Analysis Of Failures In Multi-Sensor Fusion Perception Systems
Autonomous driving systems (ADS) heavily depend on multi-sensor fusion (MSF) perception systems to process sensor data and improve the accuracy of environmental perception. However, MSF cannot completely eliminate uncertainties, and faults in multiple modules will lead to perception failures. Thus, identifying the root causes of these perception failures is crucial to ensure the reliability of MSF perception systems. Traditional methods for identifying perception failures, such as anomaly detection and runtime monitoring, are limited because they do not account for causal relationships between faults in multiple modules and overall system failure. To overcome these limitations, we propose a novel approach called interventional root cause analysis (IRCA). IRCA leverages the directed acyclic graph (DAG) structure of MSF to develop a hierarchical structural causal model (H-SCM), which effectively addresses the complexities of causal relationships. Our approach uses a divide-and-conquer pruning algorithm to encompass multiple causal modules within a causal path and to pinpoint intervention targets. We implement IRCA and evaluate its performance using real fault scenarios and synthetic scenarios with injected faults in the ADS Autoware. The average F1-score of IRCA in real fault scenarios is over 95%. We also illustrate the effectiveness of IRCA on an autonomous vehicle testbed equipped with Autoware, as well as a cross-platform evaluation using Apollo. The results show that IRCA can efficiently identify the causal paths leading to failures and significantly enhance the safety of ADS.
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The Network and Distributed System Security Symposium (NDSS) fosters information exchange among researchers and practitioners of network and distributed system security. The target audience includes those interested in practical aspects of network and distributed system security, with a focus on actual system design and implementation. A major goal is to encourage and enable the Internet community to apply, deploy, and advance the state of available security technologies.

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*** This is a Security Bloggers Network syndicated blog from Infosecurity.US authored by Marc Handelman. Read the original post at: https://www.youtube-nocookie.com/embed/s9UX5S_dwXM?si=cBE0CyvNAz1u_m6K


文章来源: https://securityboulevard.com/2025/12/ndss-2025-interventional-root-cause-analysis-of-failures-in-multi-sensor-fusion-perception-systems/
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