基于本体的智能监控上下文感知物联网框架

N. Pahal, Anupama Mallik, S. Chaudhury
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引用次数: 5

摘要

在本文中,我们提出了一个基于本体的上下文感知框架,用于提供智能监控等智能服务,该框架采用物联网技术来确保智慧城市中更好的生活质量。智能监控系统等物联网网络结合闭路电视(CCTV)摄像机和各种传感器的工作,在有价值的上下文信息的帮助下进行实时计算,以识别威胁和关键情况。这些信息本质上是感性的,需要转化为更高层次的抽象,以便进一步用于推理以识别情况。使用多媒体Web本体语言(MOWL)编码的多媒体本体可以帮助定义可能环境的概念、属性和结构,从而可以对感知输入进行语义抽象。MOWL还允许通过采用动态贝叶斯网络(DBN)对实时情况进行动态建模,这符合智能物联网系统的要求。在本文中,我们展示了该框架在智能监控系统中的应用。加强监测不仅有助于分析过去的事件,而且还有助于预测可以采取预防措施的危险情况。在我们提出的方法中,闭路电视摄像机捕获的连续视频流数据可以在飞行中进行处理,从而向有关当局发出实时警报。这些警报可以通过电子邮件、短信、屏幕警报和警报传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Ontology-based Context-aware IoT Framework for Smart Surveillance
In this paper, we have proposed an ontology-based context-aware framework for providing intelligent services such as smart surveillance, which employ IoT technologies to ensure better quality of life in a smart city. An IoT network such as a smart surveillance system combines the working of Closed-circuit television (CCTV) cameras and various sensors to perform real-time computation for identifying threats and critical situations with the help of valuable context information. This information is perceptual in nature and needs to be converted into higher-level abstractions that can further be used for reasoning to recognize situations. Semantic abstractions for perceptual inputs are possible with the use of a multimedia ontology encoded using Multimedia Web Ontology Language (MOWL) that helps to define concepts, properties and structure of a possible environment. MOWL also allows for a dynamic modeling of real-time situations by employing Dynamic Bayesian networks (DBN), which suits the requirements of a intelligent IoT system. In this paper, we show the application of this framework in a smart surveillance system. Surveillance is enhanced by not only helping to analyze past events, but by predicting dangerous situations for which preventive actions can be taken. In our proposed approach, continuous video stream of data captured by CCTV cameras can be processed on the fly to give real-time alerts to concerned authorities. These alerts can be disseminated using e-mail, text messaging, on-screen alerts and alarms.
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