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Real-time face recognition based on IoT: A comparative study between IoT platforms and cloud infrastructures

机译:基于IOT的实时面部识别:IOT平台与云基础设施的比较研究

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The use of the Internet of Things (IoT) is steadily increasing in a wide range of applications. Among these applications, safety and security are some of the prominent applications. Through surveillance systems, we can restrict access to our premises and thus secure our assets. Nowadays face detection and recognition enabled surveillance systems are available in the market, which can detect faces from video frames captured using IP cameras, and then recognize those faces by comparing them with existing databases. However, higher prices and low accuracy are impeding the large scale deployment of those systems. In this paper, we have proposed a generic architecture for face detection and recognition system from real-time video frames that have been captured through IP cameras and processed using low-cost IoT devices by utilizing Cloud computing services. We have selected two IoT platforms: Eclipse Mosquitto IoT broker and Kaa IoT middleware to implement our proposed architecture. The face detection part is deployed in the IoT devices and the computation-intensive task, i.e., face recognition is carried out in backend Cloud servers. We have executed our experiments in two different Cloud infrastructures: Core Cloud and Edge Cloud and measured the total processing time in different scenarios. The experimental results show that the performance of the Mosquitto broker in terms of total processing time is better than Kaa middleware. Total processing time can be further reduced by deploying a face recognition application from Core Cloud to Edge Cloud. Furthermore, the k-nearest neighbor algorithm shows promising results compared to other face recognition algorithms.
机译:使用互联网(IOT)的使用在各种应用中稳步增加。在这些应用中,安全性和安全性是一些突出的应用程序。通过监控系统,我们可以限制对我们的场所的访问,从而保护我们的资产。如今,市场上可用的面部检测和识别启用的监控系统,可以通过使用IP摄像机捕获的视频帧来检测面部,然后通过将它们与现有数据库进行比较来识别这些面。但是,较高的价格和低准确性正在阻碍这些系统的大规模部署。在本文中,我们提出了一种来自已通过IP摄像机捕获的实时视频帧的面部检测和识别系统的通用架构,并通过利用云计算服务使用低成本IOT设备进行处理。我们选择了两个IOT平台:Eclipse MoTquitto IoT Broker和Kaa IoT中间件,以实现我们提出的架构。面部检测部分部署在IOT设备中,并且计算密集型任务,即面部识别在后端云服务器中执行。我们已经在两个不同的云基础架构中执行了我们的实验:核心云和边缘云,并测量了不同方案中的总处理时间。实验结果表明,在总处理时间方面,MoSquitto经纪人的性能优于KAA中间件。通过从核心云部署到边缘云,可以进一步减少总处理时间。此外,与其他面部识别算法相比,k最近邻算法显示了有希望的结果。

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