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Thu, 31 Mar 2022 10:46:26 +0000
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Jian Chang <[log in to unmask]>
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Here is a gentle reminder for paper submission deadline:
The CASA main conference:  1 Apr, 2022
The AniNex Workshop: 1 May, 2022

I would like to share a good piece of news that a special issue of Graphics & Visual Computing will be published for the AniNex workshop. Please see more details as below.

Call for Paper: AniNex: The 4th workshop on Next Generation Computer Animation Techniques

The 4th AniNex workshop will be collocated with the 35th International Conference on Computer Animation and Social Agents (CASA 2022). The conference will be held at Nanjing, China, in 5-7 July, 2022. High quality papers will be recommended to be published in the journal Computer Animation and Virtual Worlds (SCI & SCIE) of Wiley, or a special issue of Graphics & Visual Computing of Elsevier.  Graphics & Visual Computing is an open access journal (as a sister journal for Computers & Graphics) where the journal has kindly agreed to waive the open access fee for this special issue. Other accepted papers will be included in the conference proceeding of CASA 2022.

The AniNex workshop aims to disseminate state of the art research related to all perspectives on computer animation, including interdisciplinary approaches. It will provide special focus on advanced physics-based animation, such as multi-phase fluids, and novel machine learning solutions for computer generated imagery.

Topics of interest include (but are not limited to):
Advanced physics-based animation techniques and dynamics
Fluid simulation
Deformation modelling and collision handling
Modelling of natural environments
GPU based modelling and simulation
Advanced rendering techniques
Machine learning applications in computer graphics
Machine learning in computer vision and computer graphics
Machine learning in motion data retrieval and analysis
Machine learning in facial expression and emotion modelling
Natural language processing and its usage in computer animation
Other advanced computer animation techniques



Submission documents must be anonymous (they do not contain author names).
Key dates:
Paper submission deadline: 1 May, 2022
Notification of acceptance: 23 May, 2022
For more info about Workshop, please visit: http://www.casa2022.org/workshop1.html



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