网络边缘的机器学习用于自动家庭入侵监控

Aditya Dhakal, K. Ramakrishnan
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引用次数: 13

摘要

使用机器学习算法可以有效地对住宅和企业进行监控。随着用于监控的传感器和设备变得越来越复杂,让人类处理信息来检测入侵将是昂贵的,而且难以扩展。我们提出了一种自动化的家庭/企业监控系统,该系统驻留在边缘服务器上,对来自附近家庭和企业的流数据进行在线学习。边缘服务器运行Open-NetVM,一种网络功能虚拟化(NFV)平台,并根据需要托管多个机器学习应用程序。这使我们能够及时为附近的一组客户提供服务,允许定制和了解每个家庭的行为。我们结合多个分类器的结果,每个分类器检查与不同传感器相关的不同特征,最终推断该条目是正常的还是入侵的。我们的结果表明,我们的系统能够比基于单一分类器的决策更好地对入侵进行分类,从而减少误报。我们还展示了我们的系统可以有效地扩展和监控数千个家庭。
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Machine learning at the network edge for automated home intrusion monitoring
Monitoring of residences and businesses can be effectively performed using machine learning algorithms. As sensors and devices used for monitoring become more complex, having humans process the information to detect intrusions would be expensive and difficult to scale. We propose an automated home/business monitoring system which resides on edge servers performing online learning on streaming data coming from homes and businesses in the neighborhood. The edge servers run Open-NetVM, a Network Function Virtualization (NFV) platform, and host multiple machine learning applications instantiated on demand. This enables us to serve a set of customers in the neighborhood on a timely basis, permitting customization and learning of the behavior of each home. We combine the results of the multiple classifiers, with each classifier examining a distinct feature related to a distinct sensor, to finally infer whether the entry is a normal one or an intrusion. Our results show that our system is able to classify intrusions better than basing the decision on a single classifier, thus reducing false alarms. We have also shown that our system can effectively scale and monitor thousands of homes.
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