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A Probabilistic Framework for Detecting Unusual Events in Mobile Sensor Networks

机译:用于检测移动传感器网络中异常事件的概率框架

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The thesis addresses the problem of identification of unusual events in mobile sensor networks. Most existing activity recognition systems based on computer vision devices or wearable sensors attempt to recognize normal activities of daily living, however they may not be well-suited to identify abnormal activities, especially the ones that have not been encountered before. In this thesis, I will study the following research problems: 1. Learning classifiers with little or no data from unusual events. 2. Low-cost, discriminatory features and most suitable sensors to be used for unusual events detection. 3. Learning high level hierarchy of activities to help in detecting transitions to unusual events. 4. Incremental / Online learning to update the unusual events classification model dynamically as the new data is received by the sensors. To tackle these research problems, I propose to use the sequential classifiers such as Hidden Markov Models and its variants.
机译:本文解决了移动传感器网络中异常事件的识别问题。现有的大多数基于计算机视觉设备或可穿戴传感器的活动识别系统都试图识别日常生活中的正常活动,但是它们可能不适合识别异常活动,尤其是以前从未遇到过的异常活动。在本文中,我将研究以下研究问题:1.在很少或没有异常事件数据的情况下学习分类器。 2.低成本,歧视性特征和最适合用于异常事件检测的传感器。 3.学习活动的高级层次结构,以帮助检测到异常事件的转变。 4.随着传感器接收新数据,增量/在线学习可动态更新异常事件分类模型。为了解决这些研究问题,我建议使用顺序分类器,例如隐马尔可夫模型及其变体。

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