Distributed and Autonomous Aerial Data Collection in Smart City Surveillance Applications

Haemin Lee, Soyi Jung, Joongheon Kim
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引用次数: 9

Abstract

The massive growth of Smart City and Internet of Things applications enables safety and security. The data those are produced from surveillance cameras in aerial devices such as unmanned aerial networks (UAVs) are needed to be transferred to ground stations for secure data analysis. When the scale of network is relatively large compare to the wireless communication coverage of device, it is not always available to transmit the data to the ground stations, thus distributed and autonomous algorithms are essentially desired. Based on the needs, we propose a novel algorithm that is for collecting surveillance data under the consideration of mobility and flexibility of UAV networks. Due to the battery limitation in UAVs, we selectively collect data from the UAVs by setting rules under the consideration of distance and similarity. As a sequence, the UAV devices have to compete for a chance to get data processing. For this purpose, this paper designs a Myerson auction-based deep learning algorithm to leverage the UAV’s revenue compare to traditional second-price auction while preserving truthfulness. Based on simulation results, we verify that our proposed algorithm achieves desired performance improvements.
智慧城市监控应用中的分布式和自主航空数据采集
智慧城市和物联网应用的大规模增长使安全成为可能。无人机(uav)等空中设备的监视摄像机产生的数据需要传送到地面站进行安全的数据分析。当网络规模相对于设备的无线通信覆盖范围较大时,并不总是可以将数据传输到地面站,因此本质上需要分布式和自治算法。基于这一需求,提出了一种考虑无人机网络移动性和灵活性的监控数据采集新算法。由于无人机电池的限制,我们在考虑距离和相似度的情况下,通过设定规则,有选择地采集无人机数据。作为一个序列,无人机设备必须竞争获得数据处理的机会。为此,本文设计了一种基于Myerson拍卖的深度学习算法,在保持真实性的同时,利用无人机与传统二价拍卖相比的收益。基于仿真结果,我们验证了我们提出的算法达到了预期的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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