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IEEEVAST
2010

Anomaly detection in GPS data based on visual analytics

13 years 7 months ago
Anomaly detection in GPS data based on visual analytics
Modern machine learning techniques provide robust approaches for data-driven modeling and critical information extraction, while human experts hold the advantage of possessing high-level intelligence and domain-specific expertise. We combine the power of the two for anomaly detection in GPS data by integrating them through a visualization and human-computer interaction interface. In this paper we introduce GPSvas (GPS Visual Analytics System), a system that detects anomalies in GPS data using the approach of visual analytics: a conditional random field (CRF) model is used as the machine learning component for anomaly detection in streaming GPS traces. A visualization component and an interactive user interface are built to visualize the data stream, display significant analysis results (i.e., anomalies or uncertain predications) and hidden information extracted by the anomaly detection model, which enable human experts to observe the real-time data behavior and gain insights into the ...
Zicheng Liao, Yizhou Yu, Baoquan Chen
Added 18 May 2011
Updated 18 May 2011
Type Journal
Year 2010
Where IEEEVAST
Authors Zicheng Liao, Yizhou Yu, Baoquan Chen
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