保护RFID数据隐私

B. Fung, Khalil Al-Hussaeni, Ming Cao
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引用次数: 22

摘要

射频识别(RFID)是一种自动识别物体的技术,在制造业、医疗保健、交通运输等领域有着广泛的应用。然而,唯一可识别的物品对携带物品的个人构成了隐私威胁。以往关于保护隐私的RFID技术的研究,如EPC重加密和杀标签等,主要集中在数据收集阶段的RFID物理标签造成的威胁,但这些技术无法解决数据发布阶段的隐私威胁,因为大量的RFID数据被发布给第三方。本文主要研究RFID数据发布所带来的隐私威胁。即使明确的识别信息(如姓名和社会安全号码)已经从发布的RFID数据中删除,攻击者也可能通过匹配先验已知的访问地点和时间戳来识别目标受害者的记录或推断她的敏感值。RFID数据默认是高维的,采用传统的匿名模型处理RFID数据存在高维的问题,会导致数据的可用性较差。我们定义了一种新的隐私模型,开发了一种匿名化算法来解决RFID数据的特殊挑战,并从数据质量和效率方面评估了其性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preserving RFID data privacy
Radio Frequency IDentification (RFID), a technology for automatic object identification, has wide applications in many areas including manufacturing, healthcare, and transportation. Yet, the uniquely identifiable objects pose a privacy threat to individuals carrying the objects. Most previous work on privacy-preserving RFID technology, such as EPC re-encryption and killing tags, focused on the threats caused by the physical RFID tags in the data collection phase, but these techniques cannot address the privacy threats in the data publishing phase, when a large volume of RFID data is released to a third party. In this paper, we study the privacy threats caused by publishing RFID data. Even if the explicit identifying information, such as name and social security number, has been removed from the published RFID data, an adversary may identify a target victim's record or infer her sensitive value by matching a priori known visited locations and timestamps. RFID data by default is high-dimensional, so applying traditional anonymity model to RFID data suffers from the curse of high dimensionality, and would result in poor data usefulness. We define a new privacy model, develop an anonymization algorithm to address the special challenges on RFID data, and evaluate its performance in terms of data quality and efficiency.
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