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DistPrivacy: Privacy-Aware Distributed Deep Neural Networks in IoT surveillance systems

机译:Distprivacy:隐私意识的IoR监视系统中的分布式深度神经网络

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With the emergence of smart cities, Internet of Things (IoT) devices as well as deep learning technologies have witnessed an increasing adoption. To support the requirements of such paradigm in terms of memory and computation, joint and real-time deep co-inference framework with IoT synergy was introduced. However, the distribution of Deep Neural Networks (DNN) has drawn attention to the privacy protection of sensitive data. In this context, various threats have been presented, including black-box attacks, where a malicious participant can accurately recover an arbitrary input fed into his device. In this paper, we introduce a methodology aiming to secure the sensitive data through re-thinking the distribution strategy, without adding any computation overhead. First, we examine the characteristics of the model structure that make it susceptible to privacy threats. We found that the more we divide the model feature maps into a high number of devices, the better we hide proprieties of the original image. We formulate such a methodology, namely DistPrivacy, as an optimization problem, where we establish a trade-off between the latency of co-inference, the privacy level of the data, and the limited-resources of IoT participants. Due to the NP-hardness of the problem, we introduce an online heuristic that supports heterogeneous IoT devices as well as multiple DNNs and datasets, making the pervasive system a general-purpose platform for privacy-aware and low decision-latency applications.
机译:随着智能城市的出现,事物互联网(物联网)和深度学习技术目睹了越来越多的收养。为了支持这种范例的要求,在内存和计算方面,介绍了带有物联网协同作用的联合和实时深度共同推理框架。然而,深神经网络(DNN)的分布引起了对敏感数据的隐私保护。在这种情况下,已经提出了各种威胁,包括黑匣子攻击,其中恶意参与者可以准确地恢复馈入其设备的任意输入。在本文中,我们介绍一种旨在通过重新思考分发策略来确保敏感数据的方法,而无需添加任何计算开销。首先,我们检查模型结构的特征,使其容易受到隐私威胁的影响。我们发现,我们将模型特征映射到大量设备中越多,我们越越好,我们隐藏了原始图像的礼物。我们制定这种方法,即Distprivacy,作为优化问题,在那里我们在协同推论的延迟,数据的隐私水平和IOT参与者的有限资源之间建立权衡。由于问题的NP - 硬度,我们介绍了一个支持异构物品设备的在线启发式,以及多个DNN和数据集,使得普遍存在的系统成为隐私感知和低决策延迟应用程序的通用平台。

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