用变分自编码器进行回归检测学习网络物理系统中的对抗例子

Feiyang Cai, Jiani Li, X. Koutsoukos
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引用次数: 8

摘要

学习支持组件(LECs)由于能够处理环境的不确定性和可变性并提高自治水平而广泛应用于网络物理系统(CPS)。然而,已有研究表明,深度神经网络(DNN)等LECs不具有鲁棒性,并且对抗性示例可能导致模型做出错误的预测。本文研究了用于CPS回归的LECs中对抗性样本的有效检测问题。该方法基于归纳共形预测,并采用基于变分自编码器的回归模型。该体系结构允许同时考虑输入和神经网络预测,以检测对抗性,更一般地说,分布外示例。我们使用在自动驾驶汽车的开源模拟器中实现的先进紧急制动系统来演示该方法,其中DNN用于估计到障碍物的距离。仿真结果表明,该方法能够有效地检测出对抗样本,且检测延迟短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Adversarial Examples in Learning-Enabled Cyber-Physical Systems using Variational Autoencoder for Regression
Learning-enabled components (LECs) are widely used in cyber-physical systems (CPS) since they can handle the uncertainty and variability of the environment and increase the level of autonomy. However, it has been shown that LECs such as deep neural networks (DNN) are not robust and adversarial examples can cause the model to make a false prediction. The paper considers the problem of efficiently detecting adversarial examples in LECs used for regression in CPS. The proposed approach is based on inductive conformal prediction and uses a regression model based on variational autoencoder. The architecture allows to take into consideration both the input and the neural network prediction for detecting adversarial, and more generally, out-of-distribution examples. We demonstrate the method using an advanced emergency braking system implemented in an open source simulator for self-driving cars where a DNN is used to estimate the distance to an obstacle. The simulation results show that the method can effectively detect adversarial examples with a short detection delay.
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