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People/Car Classification using an Ultra-Low-Power Smart Vision Sensor

机译:使用超低功耗智能视觉传感器对人员/汽车进行分类

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摘要

Deploying Internet of Things (IoT) in our cities will enable them to become smarter, thanks to the connection of everything everywhere, such as smart meters, street lighting, trash bin sensors, parking areas. However, a centralized-architecture approach, where all sensors and actuators send and receive data from the cloud, is not sustainable in terms of both the amount of data flooding from sensors to the cloud and the energy required to keep all these sensors alive. This is particularly true in the field of vision sensors, where the amount of data to be handled and transmitted can be high, while the real information we are interested in is possibly less "bulky" (e.g. a classification category or a feature). Data reduction is therefore desirable at the node level. This paper evaluates the use of a smart sensor, the FORENSOR sensor, which embeds motion detection in hardware, in a classification scenario. We achieve 87% accuracy, and we demonstrate the advantages of our sensor w.r.t frame-difference based ones. We discuss the classification algorithm chosen and we present the estimation of the power consumption, proving that the overall system consumes less than 2mW, thus being adequate for an IoT scenario.
机译:得益于智能电表,路灯,垃圾桶传感器,停车场等各地的连接,在我们城市中部署物联网(IoT)将使它们变得更智能。但是,从传感器到云的数据泛滥量以及使所有这些传感器保持活动所需的能量方面,所有传感器和执行器都从云发送和接收数据的集中式架构方法是不可持续的。这在视觉传感器领域尤其如此,在视觉传感器领域中,要处理和传输的数据量可能很高,而我们感兴趣的真实信息可能不太“庞大”(例如,分类类别或功能)。因此,在节点级别上需要减少数据量。本文在分类方案中评估了智能传感器FORENSOR传感器的使用,该传感器将运动检测嵌入到硬件中。我们达到了87%的准确度,并且展示了基于帧差的传感器的优势。我们讨论了选择的分类算法,并提出了功耗估算,证明了整个系统的功耗低于2mW,因此足以应对IoT场景。

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