Litcius/Paper detail

KD-Box: Line-segment-based KD-tree for Interactive Exploration of Large-scale Time-Series Data

Yue Zhao, Yunhai Wang, Jian Zhang, Chi-Wing Fu, Mingliang Xu, Dominik Moritz

2021IEEE Transactions on Visualization and Computer Graphics42 citationsDOI

Abstract

Time-series data-usually presented in the form of lines-plays an important role in many domains such as finance, meteorology, health, and urban informatics. Yet, little has been done to support interactive exploration of large-scale time-series data, which requires a clutter-free visual representation with low-latency interactions. In this paper, we contribute a novel line-segment-based KD-tree method to enable interactive analysis of many time series. Our method enables not only fast queries over time series in selected regions of interest but also a line splatting method for efficient computation of the density field and selection of representative lines. Further, we develop KD-Box, an interactive system that provides rich interactions, e.g., timebox, attribute filtering, and coordinated multiple views. We demonstrate the effectiveness of KD-Box in supporting efficient line query and density field computation through a quantitative comparison and show its usefulness for interactive visual analysis on several real-world datasets.

Topics & Concepts

Computer scienceInteractive visual analysisInteractive visualizationField (mathematics)VisualizationComputationRepresentation (politics)Data visualizationSelection (genetic algorithm)Visual analyticsLine (geometry)Data explorationComputer graphicsInteractive computingSeries (stratigraphy)Artificial intelligenceHuman–computer interactionData miningInformation retrievalInformation visualizationComputer graphics (images)Interactive designExternal Data RepresentationData structureContext (archaeology)Data modelingTime seriesData Visualization and AnalyticsTime Series Analysis and ForecastingComputer Graphics and Visualization Techniques