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Overcoming Security Vulnerabilities in Deep Learning-based Indoor Localization Frameworks on Mobile Devices

机译:在移动设备上基于深度学习的室内本地化框架中克服安全漏洞

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摘要

Indoor localization is an emerging application domain for the navigation and tracking of people and assets. Ubiquitously available Wi-Fi signals have enabled low-cost fingerprinting-based localization solutions. Further, the rapid growth in mobile hardware capability now allows high-accuracy deep learning-based frameworks to be executed locally on mobile devices in an energy-efficient manner. However, existing deep learning-based indoor localization solutions are vulnerable to access point (AP) attacks. This article presents an analysis into the vulnerability of a convolutional neural network-based indoor localization solution to AP security compromises. Based on this analysis, we propose a novel methodology to maintain indoor localization accuracy, even in the presence of AP attacks. The proposed secured neural network framework (S-CNNLOC) is validated across a benchmark suite of paths and is found to deliver up to 10x more resiliency to malicious AP attacks compared to its unsecured counterpart.
机译:室内定位是一个新兴的应用领域,用于导航和跟踪人员和资产。普遍存在的Wi-Fi信号已启用基于低成本的指纹定位解决方案。此外,移动硬件能力的快速增长现在允许以节能的方式在移动设备上本地执行的高精度基于深度学习的框架。但是,现有的基于深度学习的室内定位解决方案容易受到接入点(AP)攻击。本文介绍了基于卷积神经网络的室内定位解决方案的漏洞分析到AP安全妥协。基于该分析,我们提出了一种新的方法,即使在AP攻击存在下也能保持室内定位精度。拟议的安全神经网络框架(S-CNNLOC)验证在基准路径套件上,并发现与其无担保的对应相比,对恶意AP攻击提供高达10x的弹性。

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