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From the Sensor to the Cloud: Intelligence Partitioning for Smart Camera Applications

机译:从传感器到云:智能相机应用程序的智能分区

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摘要

The Internet of Things has grown quickly in the last few years, with a variety of sensing, processing and storage devices interconnected, resulting in high data traffic. While some sensors such as temperature, or humidity sensors produce a few bits of data periodically, imaging sensors output data in the range of megabytes every second. This raises a complexity for battery operated smart cameras, as they would be required to perform intensive image processing operations on large volumes of data, within energy consumption constraints. By using intelligence partitioning we analyse the effects of different partitioning scenarios for the processing tasks between the smart camera node, the fog computing layer and cloud computing, in the node energy consumption as well as the real time performance of the WVSN (Wireless Vision Sensor Node). The results obtained show that traditional design space exploration approaches are inefficient for WVSN, while intelligence partitioning enhances the energy consumption performance of the smart camera node and meets the timing constraints.
机译:在过去的几年中,物联网迅速发展,各种传感,处理和存储设备相互连接,从而带来了高数据流量。尽管某些传感器(例如温度或湿度传感器)会定期生成少量数据,但成像传感器每秒会输出兆字节范围的数据。由于电池驱动的智能相机需要在能耗限制内对大量数据执行密集的图像处理操作,因此这会增加其复杂性。通过使用智能分区,我们分析了不同分区方案对智能相机节点,雾计算层和云计算之间的处理任务的影响,节点能耗以及WVSN(无线视觉传感器节点)的实时性能)。获得的结果表明,传统的设计空间探索方法对于WVSN而言效率低下,而智能分区可以提高智能相机节点的能耗性能并满足时序约束。

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