边缘部署神经网络攻击与防御研究综述

Mihailo Isakov, V. Gadepally, K. Gettings, M. Kinsy
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引用次数: 24

摘要

由于延迟、隐私或能源原因,深度神经网络(DNN)工作负载正迅速从数据中心转移到边缘设备上。虽然可以使用传统的网络安全措施来保护数据中心网络,但边缘神经网络带来了许多新的安全挑战。与经典的物联网应用不同,边缘神经网络通常需要大量的计算和内存,它们的执行与数据无关,并且对噪声和故障具有鲁棒性。神经网络模型的开发可能非常昂贵,并且可能会泄露有关它们所训练的私人数据的信息,在分发时需要特别小心。网络的隐藏状态和输出也可以用于重建用户输入,这可能会侵犯用户的隐私。此外,神经网络容易受到对抗性攻击,这可能导致错误分类并破坏输出的完整性。这些特性在保护边缘部署的dnn时增加了挑战,需要新的考虑因素、威胁模型、优先级和方法来安全和私密地将dnn部署到边缘。在这项工作中,我们介绍了在边缘设备中部署的神经网络的攻击和防御情况,并提供了针对边缘dnn的攻击和防御分类。
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Survey of Attacks and Defenses on Edge-Deployed Neural Networks
Deep Neural Network (DNN) workloads are quickly moving from datacenters onto edge devices, for latency, privacy, or energy reasons. While datacenter networks can be protected using conventional cybersecurity measures, edge neural networks bring a host of new security challenges. Unlike classic IoT applications, edge neural networks are typically very compute and memory intensive, their execution is data-independent, and they are robust to noise and faults. Neural network models may be very expensive to develop, and can potentially reveal information about the private data they were trained on, requiring special care in distribution. The hidden states and outputs of the network can also be used in reconstructing user inputs, potentially violating users’ privacy. Furthermore, neural networks are vulnerable to adversarial attacks, which may cause misclassifications and violate the integrity of the output. These properties add challenges when securing edge-deployed DNNs, requiring new considerations, threat models, priorities, and approaches in securely and privately deploying DNNs to the edge. In this work, we cover the landscape of attacks on, and defenses, of neural networks deployed in edge devices and provide a taxonomy of attacks and defenses targeting edge DNNs.
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