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A Visual Analysis Approach to Understand and Explore Quality Problems of AIS Data

Wei He, Jinyu Lei, Xiumin Chu, Shuo Xie, Cheng Zhong, Zhixiong Li

2021Journal of Marine Science and Engineering26 citationsDOIOpen Access PDF

Abstract

Low quality automatic identification system (AIS) data often mislead analysts to a misunderstanding of ship behavior analysis and to making incorrect navigation risk assessments. It is therefore necessary to accurately understand and judge the quality problems in AIS data before a further analysis of ship behavior. Outliers were filtered in the existing methods of AIS quality analysis based only on mathematical models where AIS data related quality problems are not utilized and there is a lack of visual exploration. Thus, the human brain’s ability cannot be fully utilized to think visually and for reasoning. In this regard, a visual analytics (VA) approach called AIS Data Quality visualization (ADQvis) was designed and implemented here to support evaluations and explorations of AIS data quality. The system interface is overviewed and then the visualization model and corresponding human-computer interaction method are described in detail. Finally, case studies were carried out to demonstrate the effectiveness of our visual analytics approach for AIS quality problems.

Topics & Concepts

Visual analyticsVisualizationComputer scienceQuality (philosophy)OutlierData qualityAnalyticsInteractive visual analysisData scienceData visualizationData miningIdentification (biology)Data analysisArtificial intelligenceEngineeringBiologyMetric (unit)PhilosophyEpistemologyBotanyOperations managementData Visualization and AnalyticsHuman-Automation Interaction and SafetyGeographic Information Systems Studies
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