Evaluation of the energy viability of smart IoT sensors using TinyML for computer vision applications: A case study

M. Monteiro, Adriel Monti De Nardi
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Abstract

TinyML technology emerges from the intersection of Machine Learning, Embedded Systems, and Internet of Things (IoT), and presents itself as a solution for various IoT fields. For this technology to be successfully applied to embedded devices, it is essential that these devices have adequate energy efficiency. To demonstrate the viability of TinyML technology on embedded devices, field re- search and real experiments were conducted. An embedded system was installed in a turnstile of a Federal Institute, in which a TinyML computer vision model for people detection was implemented. The device counts the number of people, analyzes the battery level, and sends data in real-time to the cloud. The prototype showed promising results, and studies were conducted with a lithium battery and three in series. In these experiments, voltage consumption was analyzed every hour, and the results were presented through graphs. The camera sensor prototype had a consumption of 1.25 volts/hour, while the prototype without the camera sensor showed a longer-lasting consumption of 0.93 volts/hour. This field research will contribute to the advancement of applications and studies related to TinyML in conjunction with IoT and computer vision.
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使用TinyML评估智能物联网传感器在计算机视觉应用中的能量可行性:一个案例研究
TinyML技术是从机器学习、嵌入式系统和物联网(IoT)的交叉点出现的,并将其作为各种物联网领域的解决方案。为了使这项技术成功地应用于嵌入式设备,这些设备必须具有足够的能量效率。为了证明TinyML技术在嵌入式设备上的可行性,进行了现场研究和实际实验。在联邦研究所的一个旋转门上安装了一个嵌入式系统,并在其中实现了TinyML的人检测计算机视觉模型。该设备可以计算人数,分析电池电量,并将数据实时发送到云端。原型机显示出了令人鼓舞的结果,并使用一个锂电池和三个串联电池进行了研究。在这些实验中,每小时对电压消耗进行分析,并以图表的形式给出结果。带有摄像头传感器的样机的耗电量为1.25伏/小时,而没有摄像头传感器的样机的耗电量更长,为0.93伏/小时。这项实地研究将有助于TinyML与物联网和计算机视觉相关的应用和研究的进步。
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