衡量和减少智能家居设备威胁表面积的框架

Akashdeep Bhardwaj, Keshav Kaushik, Vishal Dagar, Manoj Kumar
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引用次数: 0

摘要

物联网的威胁表面积计算为设备、操作系统、相关软件应用程序和本地基础设施的安全漏洞或保护工作中的弱点和差距的总和。这聚合了所有可能暴露设备、日志、数据和托管应用程序的已知和未知威胁。通过减少设备表面暴露的元素,设备漏洞可以减少暴露的威胁表面积。这项研究提出了一个新的框架,首先绘制生态系统中的设备地图,根据每层的暴露指标测量潜在威胁表面积,然后确定设备危害的威胁向量,以计算成熟度和严重程度。作者提出了新的指标来重新评估和计算成熟度和严重程度。基于新的指标,新暴露的威胁表面元素为参与智能设备设计、实施和安全生态系统的利益相关者提供了一个新的安全视角。
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Framework to measure and reduce the threat surface area for smart home devices

Threat surface area for the Internet of Things is calculated as the sum of security vulnerabilities or the weakness and gaps in protection efforts for the device, operating systems, associated software applications, and the local infrastructure. This aggregates all the known and unknown threats that can potentially expose the device, logs, data, and hosted applications. By reducing the exposed elements of the device surface, the device vulnerabilities can decrease the exposed threat surface area. This research presents a new framework first to map the devices in the ecosystem, measure the potential threat surface area from the exposure indicators for each layer and then determine the threat vectors for device compromise to calculate the maturity and severity levels. The authors propose new metrics to reassess and re-calculate the maturity and severity levels. Based on the new metrics, newly exposed threat surface elements provide a new security perspective beneficial for stakeholders involved in design, implementation, and security ecosystem of smart devices.

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