Deep-RBF Networks for Anomaly Detection in Automotive Cyber-Physical Systems

Matthew P. Burruss, Shreyas Ramakrishna, A. Dubey
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引用次数: 5

Abstract

Deep Neural Networks (DNNs) are widely used in automotive Cyber-Physical Systems (CPSs) to implement autonomy related tasks. However, these networks have exhibited erroneous predictions to anomalous inputs that manifest either due to Out-of-Distribution (OOD) data or adversarial attacks. To detect these anomalies, a separate DNN called assurance monitor is used in parallel to the controller DNN, increasing the resource burden and latency. We hypothesize that a single network that can perform controller predictions and anomaly detection is necessary to reduce the resource requirements. Deep-Radial Basis Function (RBF) networks provide a rejection class alongside the class predictions, which can be used for anomaly detection. However, the use of RBF activation functions limits the applicability of these networks to only classification tasks. In this paper, we discuss the steps involved in detecting anomalies in CPS regression and classification tasks. Further, we design deep-RBF networks using popular DNNs such as NVIDIA DAVE-II and ResNet20 and then use the resulting rejection class for detecting physical and data poison adversarial attacks. We show that the deep-RBF network can effectively detect these attacks with limited resource requirements.
基于深度rbf网络的汽车信息物理系统异常检测
深度神经网络(Deep Neural Networks, DNNs)广泛应用于汽车信息物理系统(cps)中,以实现与自动驾驶相关的任务。然而,这些网络对异常输入的错误预测可能是由于分布外(OOD)数据或对抗性攻击造成的。为了检测这些异常,与控制器DNN并行使用一个称为保证监视器的单独DNN,这增加了资源负担和延迟。我们假设可以执行控制器预测和异常检测的单个网络对于减少资源需求是必要的。深度径向基函数(Deep-Radial Basis Function, RBF)网络在类预测的基础上提供了一个拒绝类,可用于异常检测。然而,RBF激活函数的使用限制了这些网络仅适用于分类任务。在本文中,我们讨论了在CPS回归和分类任务中检测异常的步骤。此外,我们使用NVIDIA DAVE-II和ResNet20等流行的dnn设计了深度rbf网络,然后使用产生的拒绝类来检测物理和数据毒性对抗性攻击。研究表明,深度rbf网络可以在有限的资源需求下有效检测这些攻击。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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