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Design, analysis and implementation of a smart next generation secure shipping infrastructure using autonomous robot

机译:使用自主机器人的智能下一代安全运输基础设施的设计,分析和实施

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摘要

In general, price is the key element in shipping, and half of the costs are tied up in last-mile deliveries. The biggest expense here is the human element, so companies, which can cut down on staff costs, will be able to outprice their competitors. Therefore, we expect sooner, or later robotic delivery systems will become the norm. However, ensuring security in such a system will be a challenge. In this article, we propose a secure shipping infrastructure using robot. In this regard, we first design a cooperative user authentication system for delivering parcel using crypto primitives such as one-way hash function, asymmetric encryption and QR code. Next, we design a non-cooperative user identification scheme using Siamese Network for Person Reidentification, where the client is not ready to cooperate during the authentication process. Therefore, the robot carrier needs to automatically recognize and go towards the client to deliver the parcel in a secure way. Finally, we implement the proof-of-concept system through a cooperative user authentication process using TurtleBot3 robot platform and analyse the security of the proposed scheme using ProVerif. Analysis and experiment results show that our proposed system can complete the delivery mission and resist a variety of security attacks.
机译:一般来说,价格是运输的关键要素,一半的成本在最后一英里的交付中捆绑在一起。这里的最大费用是人类元素,所以公司可以减少员工成本,将能够出于竞争对手的竞争对手。因此,我们期待迟早或后期的机器人送货系统将成为常态。但是,确保在这种系统中的安全将是一项挑战。在本文中,我们建议使用机器人安全的运输基础设施。在这方面,我们首先设计用于使用加密原语,例如单向散列函数,非对称加密和QR码来传递包裹的合作用户身份验证系统。接下来,我们设计一种使用暹罗网络的非协作用户识别方案,用于人员重新登封,客户端在认证过程中未准备好协作。因此,机器人载体需要自动识别并朝向客户端以安全的方式传送包裹。最后,我们通过使用Turtlebot3机器人平台来实现概念证明系统,并使用纤维纤维分析所提出的方案的安全性。分析和实验结果表明,我们所提出的系统可以完成交付使命并抵制各种安全攻击。

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