Abstract

Abnormal event detection is one of the vital tasks in wireless sensor networks. However, the faults of nodes and the poor deployment environment have brought great challenges to abnormal event detection. In a typical event detection technique, spatiotemporal correlations are collected to detect an event, which is susceptible to noises and errors. To improve the quality of detection results, we propose a novel approach for abnormal event detection in wireless sensor networks. This approach considers not only spatiotemporal correlations but also the correlations among observed attributes. A dependency model of observed attributes is constructed based on Bayesian network. In this model, the dependency structure of observed attributes is obtained by structure learning, and the conditional probability table of each node is calculated by parameter learning. We propose a new concept named attribute correlation confidence to evaluate the fitting degree between the sensor reading and the abnormal event pattern. On the basis of time correlation detection and space correlation detection, the abnormal events are identified. Experimental results show that the proposed algorithm can reduce the impact of interference factors and the rate of the false alarm effectively; it can also improve the accuracy of event detection.

Highlights

  • Abnormal event detection is one of the main problems in wireless sensor networks [1]

  • In order to improve the accuracy of abnormal event detection in wireless sensor networks with multiple attributes and reduce the influence of environmental noises and sensor failures on the event detection results, this paper proposes a new method called Abnormal Event Detection based on Multiattribute Correlation (MACAED)

  • In Online Dynamic Event Region Detection (ODERD) algorithm, since we only focus on the static abnormal event detection, the parameters controlling the shift and deformation of event regions are set to 0 s

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Summary

Introduction

Abnormal event detection is one of the main problems in wireless sensor networks [1]. Paper [6] proposed an event detection scheme based on spatiotemporal correlations In this method, the sensor nodes are divided into multiple working groups; the time correlation of the sensor data is used to eliminate low frequency errors. Different working groups cooperate to determine whether the anomalies represent an event This method only constructs the model based on the single sensing attribute and does not consider the relations between the multisensory attribute and the abnormal event. In order to improve the accuracy of abnormal event detection in wireless sensor networks with multiple attributes and reduce the influence of environmental noises and sensor failures on the event detection results, this paper proposes a new method called Abnormal Event Detection based on Multiattribute Correlation (MACAED). The anomaly events were detected by three kinds of attribute correlation

Attribute Dependency Model
Abnormal Event Detection Algorithm Based on Multiattribute Correlation
Experimental Results and Analysis
Conclusion
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