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Vis Inf  2018, Vol. 2 Issue (1): 60-70    DOI: 10.1016/j.visinf.2018.04.007
Original articles     
TideGrapher: Visual Analytics of Tactical Situations for Rugby Matches
Yusuke Ishikawa, Issei fujishiro
Keio University, 3-14-1 Hiyoshi, Kohoku-ku, Yokhama, Kanagawa, 223–8522, Japan
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Abstract  
Various attempts at exploiting information visualization for sports have recently been reported in the literature, although it is still challenging to analyze continuous ball matches. In this paper, we propose a novel visual analytics system, called TideGrapher, to track the transition of tactile situations in a rugby match. With a particular focus on the side position of the ball, we designed a dedicated spatial substrate based on the spatio-temporal trajectory of the ball and provided a set of basic interactions. Quantitative analysis was strengthened by adding a new index, called initiative, to commonly used possession (ball occupation) and territory (dominance of territory). The feasibility of the proposed visual analytics system was proven empirically through application to datasets from real amateur and professional 


Key wordsInformation visualization      Sports visualization      Quantitative analysis      Visual analytics      
Published: 19 June 2018
Cite this article:

Yusuke Ishikawa, Issei fujishiro. TideGrapher: Visual Analytics of Tactical Situations for Rugby Matches. Vis Inf, 2018, 2(1): 60-70.

URL:

http://www.zjujournals.com/vi/10.1016/j.visinf.2018.04.007     OR     http://www.zjujournals.com/vi/Y2018/V2/I1/60


TideGrapher:橄榄球比赛战术的可视分析

背景:尽管近来已有多项关于体育信息可视化方法的研究见诸文献,对连续的球类比赛进行分析仍是一个具有挑战性的课题。 创新:本文提出了一种新的可视分析系统TideGrapher:用于跟踪橄榄球比赛中控球情况的变化。我们将关注点聚焦于球的侧面,根据球的时空轨迹设计了一个专用的空间基面,并提供了一组基本的交互动作。通过在常用的“控球”和“防守区”两个指标的基础上增加一个新的指标——主动性,来加强定量分析。 应用:本文以真实的业余和职业比赛数据为案例,来验证本方法的可行性。


关键词: 信息可视化,  体育可视化,  定量分析,  可视化分析 
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