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PacificVis 2020 : IEEE Pacific Visualization Symposium

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Link: http://vis.tju.edu.cn/pvis2020/
 
When Apr 14, 2020 - Apr 17, 2020
Where Tianjin, China
Abstract Registration Due Sep 27, 2019
Submission Deadline Oct 4, 2020
Notification Due Nov 29, 2019
Final Version Due Jan 23, 2020
Categories    pacific visualization
 

Call For Papers

PacificVis is a unified visualization symposium, welcoming all areas of visualization research such as information visualization, scientific visualization, graph and network visualization, visual analytics, and specific applications such as (but not limited to) security, software, and biological visualization. Authors are invited to submit original and unpublished research and application papers in all areas of visualization. We encourage papers in any new, novel, and exciting research area that pertains to visualization.
All submitted papers will go through a two-stage review process to guarantee the publication of high-quality papers. All papers accepted by IEEE Pacific Visualization 2020 will be published by IEEE and will be also included in the IEEE Digital Library. Selected papers will be published directly in IEEE Transactions on Visualization and Computer Graphics (TVCG).

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