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Vis Inf  2020, Vol. 4 Issue (4): 41-49    DOI: 10.1016/j.visinf.2020.11.001
论文     
莫纳什大学数据可视化与沉浸式分析实验室
Tim Dwyer,Maxime Cordeil,Tobias Czauderna,Pari Delir Haghighi,Barrett Ens,SarahGoodwin,Bernhard Jenny,Kim Marriott ,Michael Wybrow
Monash University, Australia
The Data Visualisation and Immersive Analytics Research Lab at Monash University
Tim Dwyer,Maxime Cordeil,Tobias Czauderna,Pari Delir Haghighi,Barrett Ens,SarahGoodwin,Bernhard Jenny,Kim Marriott ,Michael Wybrow
Monash University, Australia</span>
 全文: PDF 
摘要: 莫纳什大学(Monash University),建于1958年,坐落于澳大利亚维多利亚州墨尔本,是一所蜚声国际的顶尖研究型大学。莫纳什大学的数据可视化与沉浸式分析实验室(Monash IA Lab)已经成立了20多年,一直致力于信息可视化的主题研究,在网络可视化,交互式优化以及地理和制图可视化层面的算法,交互技术和实验结果上做出了巨大贡献。同时,Monash IA Lab 还是沉浸式分析(支持数据分析的自然交互和沉浸式显示技术)这一新兴领域上领先者。目前 Prof. Tim Dwyer 是 Monash IA Lab 负责人。
关键词: 沉浸式分析数据可视化网络可视化制图可视化交互式优化    
Abstract: This article reviews two decades of research in topics in Information Visualisation emerging from the Data Visualisation and Immersive Analytics Lab at Monash University Australia (Monash IA Lab). The lab has been influential with contributions in algorithms, interaction techniques and experimental results in Network Visualisation, Interactive Optimisation and Geographic and Cartographic visualisation. It has also been a leader in the emerging topic of Immersive Analytics, which explores natural interactions and immersive display technologies in support of data analytics. We reflect on advances in these areas but also sketch our vision for future research and developments in data visualisation more broadly.
Key words: Immersive Analytics    Data Visualisation    Network visualisation    Cartographic visualisation    Interactive optimisation
出版日期: 2020-12-01
通讯作者: Tim Dwyer     E-mail: tim.dwyer@monash.edu
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Tim Dwyer
Maxime Cordeil
Tobias Czauderna
Pari Delir Haghighi
Barrett Ens
SarahGoodwin
Bernhard Jenny
Kim Marriott
Michael Wybrow

引用本文:

Tim Dwyer, Maxime Cordeil, Tobias Czauderna, Pari Delir Haghighi, Barrett Ens, SarahGoodwin, Bernhard Jenny, Kim Marriott, Michael Wybrow. The Data Visualisation and Immersive Analytics Research Lab at Monash University. Vis Inf, 2020, 4(4): 41-49.

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http://www.zjujournals.com/vi/CN/10.1016/j.visinf.2020.11.001        http://www.zjujournals.com/vi/CN/Y2020/V4/I4/41

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