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Related Experiment Video

Updated: Feb 23, 2026

Comparison of Kinetic Characteristics of Footwork during Stroke in Table Tennis: Cross-Step and Chasse Step
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iTTVis: Interactive Visualization of Table Tennis Data.

Yingcai Wu, Ji Lan, Xinhuan Shu

    IEEE Transactions on Visualization and Computer Graphics
    |September 4, 2017
    PubMed
    Summary
    This summary is machine-generated.

    This study introduces iTTVis, a novel interactive visualization system for table tennis data analysis. It enables new insights into match dynamics through time-oriented, statistical, and tactical perspectives.

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    Area of Science:

    • Sports Analytics
    • Information Visualization
    • Human-Computer Interaction

    Background:

    • Modern information technology enables fine-grained data recording in table tennis matches.
    • Analyzing complex table tennis data is challenging with traditional methods like video review and statistical tables.
    • Existing sports visualization tools are inadequate for table tennis due to unique rules and data attributes.

    Purpose of the Study:

    • To address the challenges in analyzing complex table tennis data.
    • To develop a novel interactive visualization system for table tennis match analysis.
    • To provide a holistic view of matches from multiple analytical perspectives.

    Main Methods:

    • Collaborated with data analysts to understand domain-specific challenges.
    • Developed iTTVis, an interactive visualization system tailored for table tennis data.
    • Integrated time-oriented, statistical, and tactical analysis views.

    Main Results:

    • iTTVis offers a holistic visualization of table tennis matches.
    • The system facilitates correlation identification and tactical pattern detection.
    • Data analysts gained new insights into match dynamics using iTTVis.

    Conclusions:

    • iTTVis is the first visual analysis system for table tennis data.
    • The system effectively supports correlation identification and pattern detection.
    • Case studies demonstrate the effectiveness and usability of iTTVis for data analysts.