基于云的卷积神经网络和树莓派的警报入侵者检测

Michael Christopher Xenya, Crentsil Kwayie, Kester Quist-Aphesti
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引用次数: 2

摘要

本文利用树莓派、微软Azure和Twilio云系统构建了一个基于卷积神经网络(CNN)的入侵者检测系统。实现存储在云端的CNN算法,将输入数据基本划分为入侵者和用户。通过使用树莓派作为中间件和树莓派相机进行图像采集,利用云计算提供的更高资源,高效地执行学习和分类操作。云系统还被编程为在检测到入侵者或用户时通过多媒体消息服务(MMS)提醒指定用户。此外,我们的工作表明,虽然卷积神经网络对处理器的计算要求很高,但输入数据可以通过低成本的模块和中间件获得,这些模块和中间件的处理能力较低,同时将实际的学习算法执行置于云系统中。
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Intruder Detection with Alert Using Cloud Based Convolutional Neural Network and Raspberry Pi
In this paper, an intruder detection system has been built with an implementation of convolutional neural network (CNN) using raspberry pi, Microsoft’s Azure and Twilio cloud systems. The CNN algorithm which is stored in the cloud is implemented to basically classify input data as either intruder or user. By using the raspberry pi as the middleware and raspberry pi camera for image acquisition, efficient execution of the learning and classification operations are performed using higher resources that cloud computing offers. The cloud system is also programmed to alert designated users via multimedia messaging services (MMS) when intruders or users are detected. Furthermore, our work has demonstrated that, though convolutional neural network could impose high computing demands on a processor, the input data could be obtained with low-cost modules and middleware which are of low processing power while subjecting the actual learning algorithm execution to the cloud system.
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