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首页> 外文期刊>ACM transactions on intelligent systems and technology >A Traffic Density Estimation Model Based on Crowdsourcing Privacy Protection
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A Traffic Density Estimation Model Based on Crowdsourcing Privacy Protection

机译:基于众包隐私保护的流量密度估计模型

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摘要

Acquiring traffic condition information is of great significance in transportation guidance, urban planning, and route recommendation. To date, traffic density data are generally acquired by road sound analysis, video data analysis, or in-vehicle network communication, which are usually financially or temporally expensive. Another way to get traffic conditions is to collect track data by crowdsourcing. However, this way lead to a greater risk of leaking users' privacy. To avoid the risk, this article proposes a traffic density estimation model based on crowdsourcing privacy protection. First, in the acquisition process of the track data by crowdsourcing, dual servers are employed for transmission, and homomorphic encryption is carried out to encrypt the data to protect the data from being leaked during transmission. Second, sampling is implemented for randomization and anonymization to reduce the spatial continuity and temporal continuity of position data. In this way, the intermediate server cannot acquire users' original data, and the main server cannot obtain users' personal information. Finally, before data transmission, Laplace noising is performed on the users' local position data to further protect the original location information. The proposed algorithm in this study realizes that only users have their original track data, and the servers involved in the work cannot infer the original track data, which ensures the real security of user privacy. The proposed algorithm was verified with the track data from the Didi Gaia Data Opening Plan. The experimental results showed that the proposed algorithm could still maintain the validity of data analysis results and the security of user data privacy after homomorphic encryption, noise addition, and sample collection, and displayed good robustness and scalability.
机译:获取交通状况信息在运输指导,城市规划和路由推荐方面具有重要意义。迄今为止,流量密度数据通常由道路分析,视频数据分析或车载网络通信获取,这些网络通信通常在经济上或时间上昂贵。获得交通状况的另一种方法是通过众包收集跟踪数据。然而,这种方式导致泄露用户隐私的风险更大。为避免风险,本文提出了一种基于众包隐私保护的流量密度估算模型。首先,在通过众包的轨道数据的获取过程中,采用双重服务器进行传输,并执行同种形心的加密以加密数据以在传输期间保护数据泄漏。其次,实施采样以进行随机化和匿名化,以降低位置数据的空间连续性和时间连续性。以这种方式,中间服务器无法获取用户的原始数据,主服务器无法获得用户的个人信息。最后,在数据传输之前,对用户的本地位置数据执行拉普拉斯通知,以进一步保护原始位置信息。本研究中的提议算法意识到只有用户只有其原始轨道数据,并且工作中涉及的服务器无法推断出原始的跟踪数据,这确保了用户隐私的真正安全性。从Didi Gaia数据开放计划中验证了所提出的算法。实验结果表明,算法仍然可以保持数据分析结果的有效性和同性恋加密,噪声添加和样品收集后的用户数据隐私的安全性,并显示出良好的鲁棒性和可扩展性。

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