基于深度学习的区块链解决方案,用于保护未来车辆的隐私

R. Varsha, M. Nair, Siddharth M. Nair, A. Tyagi
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引用次数: 4

摘要

由于最近的技术进步,物联网(智能物)被用于许多领域和应用。这样的应用之一是在运输系统中,它主要用于用户从一个地方移动到另一个地方。嵌入车辆的智能设备可以帮助乘客解决他/她的问题,其中未来的车辆将完全自动化到高级阶段,即具有无人驾驶功能的未来汽车。这些自动驾驶汽车将大大减少人们的时间,提高他们在各自(相关)业务中的生产力。在今天和不久的将来,隐私保护和信任将成为用户和自动驾驶汽车的主要关注点,因此,本文将能够为同样的问题提供清晰度。过去十年的许多尝试提供了许多有效的机制,但它们都只适用于有驾驶员的车辆。然而,这些机制并不适用于未来的车辆。在本文中,我们将使用深度学习技术来建立信任,使用推荐系统和区块链技术来保护隐私。我们还通过维护生活在特定环境中的用户的最高隐私来维持一定程度的信任。在这项研究中,我们开发了一个框架,可以为道路网络上的用户提供最大的信任或可靠的通信。这样,我们还可以保护用户在旅行期间的隐私,即在到达目的地时不会从可信第三方甚至基于位置的服务中透露各自用户的身份。因此,基于深度学习的区块链解决方案(DLBS)用于提供高效的推荐系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning based Blockchain solution for preserving privacy in future vehicles
The Internet of Things (smart things) is used in many sectors and applications due to recent technological advances. One of such application is in the transportation system, which is of primary use for the users to move from one place to another place. The smart devices which were embedded in vehicles are useful for the passengers to solve his/her query, wherein future vehicles will be fully automated to the advanced stage, i.e. future cars with driverless feature. These autonomous cars will help people a lot to reduce their time and increases their productivity in their respective (associated) business. In today’s generation and in the near future, privacy preserving and trust will be a major concern among users and autonomous vehicles and hence, this paper will be able to provide clarity for the same. Many attempts in previous decade have provided many efficient mechanisms, but they all work only with vehicles along with a driver. However, these mechanisms are not valid and useful for future vehicles. In this paper, we will use deep learning techniques for building trust using recommender systems and Blockchain technology for privacy preserving. We also maintain a certain level of trust via maintaining the highest level of privacy among users living in a particular environment. In this research, we developed a framework that could offer maximum trust or reliable communication to users over the road network. With this, we also preserve privacy of users during traveling, i.e., without revealing identity of respective users from Trusted Third Parties or even Location Based Service in reaching a destination. Thus, Deep Learning based Blockchain Solution (DLBS) is illustrated for providing an efficient recommendation system.
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