基于Logistic混沌映射的端到端加密增强自动驾驶系统协同感知中的安全性

Manzoor Hussain, Jang-Eui Hong
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引用次数: 0

摘要

多个网络物理系统(cps)之间的协作需要提高安全性、可靠性和性能。协作式cps共享共同的目标,并协作实现这些目标。联网和自动驾驶汽车(cav)是协作cps的典型例子。自动驾驶汽车的合作感知是一项新兴技术,它使自动驾驶汽车能够与其他汽车共享其本地感知,从而提高效率和道路安全。然而,在协同感知中,恶意车辆可能会发送虚假的车辆信息,此外,由于传感器故障,车辆可能会无意中恶意。这些问题会造成严重的驾驶危险,因为它们会引发交通事故。因此,本文采用基于逻辑混沌地图的端到端加密技术,在协同感知中避免恶意车辆信息。通过在两辆车之间共享摄像头传感器图像帧来实现协同感知。利用卡拉模拟器,我们演示了基于实时逻辑混沌映射的加密在自动驾驶汽车协同感知中的应用。与现有的基线方法(如Cooper和F -Cooper)不同,在我们的协同感知中,我们首先在共享之前对图像帧进行加密,然后在接收端对图像帧进行解密,以避免恶意信息。直方图、相邻像素相关性和密钥敏感性分析等实验结果表明,使用基于逻辑映射的加密技术的协同感知比现有方法更安全、更可靠。此外,我们的合作感知系统比自动驾驶汽车的个体感知系统提高了两倍的检测率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enforcing Safety in Cooperative Perception of Autonomous Driving Systems through Logistic Chaos Map-based End-to-End Encryption
Collaboration among multiple cyber-physical systems (CPSs) requires improved safety, reliability, and performance. Collaborative CPSs share common goals and collaborate to achieve them. Connected and autonomous vehicles (CAVs) are typical examples of collaborative CPSs. The Cooperative perception in CAVs is an emerging technology that enables the CAVs to share their local perception with others, thereby improving efficiency and road safety. However, in cooperative perception, malicious vehicles may send phantom vehicle information, and additionally, vehicles may unintentionally be malicious due to faulty sensors. These issues pose serious driving hazards as they can incur traffic accidents. Therefore, this article uses logistic chaos map-based end-to-end encryption techniques to avoid malicious vehicle information in cooperative perception. The cooperative perception is achieved via sharing the camera sensor image frames between two vehicles. Using the CARLA simulator, we demonstrated the real-time logistic chaos map-based encryption in the cooperative perception of CAVs. Unlike existing baseline approaches such as Cooper and F -Cooper, in our cooperative perception, we first encrypt the image frames before sharing and then decrypt the image frame at receiving end to avoid malicious information. The experimental results, such as the histogram, adjacent pixel correlation, and key sensitivity analysis, demonstrated that cooperative perception using logistic map-based encryption is safer and more secure than existing methods. In addition, our cooperative perception system increased the detection rate up to two times than the individual perception system of CAVs.
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