面向摄像机传感器网络节能的分布式自适应任务分配

C. Kyrkou, T. Theocharides, C. Panayiotou, M. Polycarpou
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引用次数: 2

摘要

相机传感器网络(csn)具有广泛而多样的应用范围,从安全和安全关键应用到工业监控和增强现实。这种网络中的摄像头配备了实时多任务处理器和通信基础设施,使它们能够以分布式和协作的方式执行各种计算机视觉任务。在许多情况下,网络中的摄像机在有限或不可靠的电源下运行。因此,为了延长CSN的使用寿命,管理相机的能量消耗是很重要的,这与它们执行的视觉任务的工作量有关。因此,通过以能量感知的方式管理和分配视觉任务给摄像机,可以延长网络寿命。在本文中,我们通过提出一个分布式的基于市场的解决方案来解决这个问题,其中摄像机使用能量感知效用函数来竞标任务。该解决方案的另一个新颖之处在于,摄像机可以根据其剩余能量水平调整其竞标策略。针对不同的CSN配置和设置的结果表明,所提出的方法可以将网络生命周期提高10%-30%,同时将被监视的动态和静态任务的数量提高30-50%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed adaptive task allocation for energy conservation in camera sensor networks
Camera Sensor Networks (CSNs) have a large and diverse application spectrum ranging from security and safety-critical applications, to industrial monitoring, and augmented reality. Cameras in such networks are equipped with real-time multitasking processors and communication infrastructure, which enables them to perform various computer vision tasks in a distributed and collaborative manner. In many cases, the cameras in the network operate under limited or unreliable power sources. Therefore in order to extend the CSN lifetime it is important to manage the energy consumption of the cameras, which is related to the workload of the vision tasks they perform. Hence by managing and assigning vision tasks to cameras in an energy-aware manner it is possible to extend the network lifetime. In this paper we address this problem by proposing a distributed market-based solution where cameras bid for tasks using an energy-aware utility function. An additional novelty of the proposed solution is that as the cameras can adapt their bidding strategy based on their remaining energy levels. The results for different CSN configurations and setups show that the proposed methodology can increase network lifetime by 10%-30% while improving the number of dynamic and static tasks being monitored by 30-50%.
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