一种新型的能源感知安全无人机互联网设计:ESIoD

Sayani Sarkar, Shivanjali Khare, Michael W. Totaro, Ashok Kumar
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引用次数: 4

摘要

无人驾驶飞行器(uav)或无人机正在成为一种有前途的技术,用于各种基于监控和监视的应用。智能无人机不仅限于图像捕获,还可以利用人工智能进行实时决策。此外,还需要考虑捕获图像的数据安全性。在本文中,我们提出了一种新型的能源感知安全无人机互联网(ESIoD)架构。如何在保证无人机捕获图像数据安全的同时,实现更快的机载处理和减少电池使用量,从而延长无人机的飞行时间,是本工作解决的一个关键研究问题。具体来说,无人机捕获的实时图像使用AES或RSA算法进行加密,并由机载计算机卸载到云服务器上,使用标准Haar级联分类器和先进的更快的R-CNN分类器处理认知行为。本研究的重点是通过安全的计算卸载来节省无人机的电池寿命,以优化无人机的飞行时间。使用无人机拍摄的样本图像和视频进行了两组实验。结果表明,在考虑的应用中,与传统的实时机载处理相比,ESIoD架构可以节省80%的机载处理时间和3倍的无人机电池电量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Energy Aware Secure Internet of Drones Design: ESIoD
Unmanned aerial vehicles (UAVs), or drones, are emerging as a promising technology for a variety of monitoring and surveillance-based applications. Smart UAVs are not limited only to image capturing, but also to real-time decision making using artificial intelligence. Moreover, it is important to consider the data security of captured images. In this paper, we propose a novel Energy-aware Secure Internet of Drone (ESIoD) architecture. A crucial research problem addressed by this work is how to accomplish faster onboard processing and reduce battery usage for a UAV to prolong the flight time while retaining data security of UAV captured images. Specifically, drone-captured real-time images are encrypted using either AES or RSA algorithms and offloaded by the onboard computer to a cloud server for the processing of cognitive actions using both a standard Haar cascade classifier and an advanced faster R-CNN classifier. The focus of this study is to conserve the drone battery life by secure computational offloading to optimize drone flight time. Two sets of experiments were performed using drone-captured sample images and videos. Results show that the ESIoD architecture can conserve 80% onboard processing time and 3X drone battery charge usage as compared to conventional real-time onboard processing for the considered application.
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