Sensor-Based Abnormal Human-Activity Detection

IEEE Transactions on Knowledge and Data Engineering(2008)

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摘要
With the availability of affordable sensors and sensor networks, sensor-based human activity recognition has attracted much attention in artificial intelligence and ubiquitous computing. In this paper, we present a novel two-phase approach for detecting abnormal activities based on wireless sensors attached to a human body. Detecting abnormal activities is a particular important task in security monitoring and healthcare applications of sensor networks, among many others. Traditional approaches to this problem suffer from a high false positive rate, particularly when the collected sensor data are biased towards normal data while the abnormal events are rare. Therefore, there is a lack of training data for many traditional data mining methods to be applied. To solve this problem, our approach first employs a one-class support vector machine (SVM) that is trained on commonly available normal activities, which filters out the activities that have a very high probability of being normal. We then derive abnormal activity models from a general normal model via a kernel nonlinear regression (KNLR) to reduce false positive rate in an unsupervised manner. We show that our approach provides a good tradeoff between abnormality detection rate and false alarm rate, and allows abnormal activity models to be automatically derived without the need to explicitly label the abnormal training data, which are scarce. We demonstrate the effectiveness of our approach using real data collected from a sensor network that is deployed in a realistic setting.
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关键词
abnormal activity model,outlier detection,abnormal training data,abnormal event,sensor network,sensor-based abnormal human-activity detection,activity recognition,data mining.,abnormal activity,derive abnormal activity model,normal data,sensor networks,sensor data,traditional data mining method,data security,gesture recognition,support vector machine,artificial intelligent,regression analysis,data collection,artificial intelligence,support vector machines,human body,ubiquitous computing,wireless sensor networks,false alarm rate,false positive rate,intelligent sensors,nonlinear regression,training data,data mining
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