移动众测服务中数据安全的可扩展隐私保护技术综述

Jinfeng Su, Sreekar Konda, Mohammad Momani
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引用次数: 0

摘要

移动众测是一项基于一群拥有设备的不同个体的服务。MCS (Mobile crowdsensing)用于通信和数据传输。它能够感知和计算基于测量、绘图、分析和估计等信息的数据。它可以用于人群中的有效决策。将人群中产生的数据用于任务生成,并将任务分配给不同的用户和请求者。由于工作众多,可能会产生任务相似度的情况,这可能会影响众测中用户或工作人员的隐私。在群体感知中,隐私保护技术可以解决隐私问题。本工作旨在提出一种基于系统的MCS技术,用于具有适当可扩展性的数据隐私保护。采用CPP (Crowdsensing Privacy Protection)分类法,该分类法基于good的全面性和适应度。拟议安排的用处在于订购了30种最先进的解决办法。改进的结果是基于非凡的资产和减少不同的MCS隐私保护技术。可以得出结论,采用MCS隐私保护系统基于具有精确维度的检测和学习算法来保护用户数据。本研究探讨了当前在可扩展隐私保护的MCS领域的创新和技术。采用不同的相关算法对MCS的用户和请求者进行有效决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review of scalable privacy protection techniques in mobile crowdsensing service for security of data
Mobile crowdsensing is a service based on a group of different individuals that have a device. The MCS (Mobile crowdsensing) is used for communication and transferring of data. It is capable of sensing and computing such data that are based on some information such as measuring, mapping, analyzing, and estimating. It can be used for effective decision-making in-crowd. The data generated in by crowd is used for task generation, and the task is assigned to different users and requesters. Due to numerous jobs, there can be a situation of task similarity generates, which may affect the privacy of users or workers in crowdsensing. The problem of privacy can be solved with the help of privacy protection techniques in crowdsensing. This work aims to propose a system based MCS technique for Privacy protection of data with proper scalability. CPP (Crowdsensing Privacy Protection) taxonomy is used that is based on the comprehensiveness and fitness of good. The usefulness of the proposed arrangement is explained by ordering 30 state-of-the-art solutions. Improved consequences are based on extraordinary assets and diminish of different MCS privacy protection techniques. It can be concluded that by employing the MCS privacy protection system for securing user data based on detection and learning algorithms with accurate dimensions. This research investigates the current innovations and techniques in the field of MCS for scalable privacy protection. Different relevant algorithms are used for effective decision making for users and requestors of MCS.
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