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Deployment of Facial Recognition Models at the Edge: A Feasibility Study

机译:边缘人脸识别模型的部署:一项可行性研究

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摘要

Model training and inference in Artificial Intelligence (AI) applications are typically performed in the cloud. There is a paradigm shift in moving AI closer to the edge, allowing for IoT devices to perform AI function onboard without incurring network latency. With the exponential increase of edge devices and data generated, capabilities of cloud computing would eventually be limited by the bandwidth and latency of the network. To mitigate the potential risks posed by cloud computing, this paper discusses the feasibility of deploying inference onboard the device where data is being generated. A secure access management system using MobileNet facial recognition was implemented and the preliminary results showed that the deployment at the edge outperformed the cloud deployment in terms of overall response speed while maintaining the same recognition accuracy. Thus, management of the automated deployment of inference models at the edge is required.
机译:人工智能(AI)应用程序中的模型训练和推理通常在云中执行。将AI移到边缘的位置发生了范式转变,从而使IoT设备可以在板上执行AI功能而不会引起网络延迟。随着边缘设备和生成的数据呈指数增长,云计算的能力最终将受到网络带宽和等待时间的限制。为了减轻云计算带来的潜在风险,本文讨论了在生成数据的设备上部署推理的可行性。实施了一个使用MobileNet面部识别的安全访问管理系统,初步结果表明,在保持相同识别精度的同时,边缘部署在总体响应速度方面胜过了云部署。因此,需要在边缘对推理模型的自动部署进行管理。

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