Baseball Timeline: Summarizing Baseball Plays Into a Static Visualization

2018 ◽  
Vol 37 (3) ◽  
pp. 491-501 ◽  
Author(s):  
Jorge P. Ono ◽  
Carlos Dietrich ◽  
Claudio T. Silva
Keyword(s):  
2011 ◽  
Vol 17 (12) ◽  
pp. 1949-1958 ◽  
Author(s):  
M. Hlawatsch ◽  
P. Leube ◽  
W. Nowak ◽  
D. Weiskopf

2020 ◽  
Vol 3 (2) ◽  
pp. 82-86
Author(s):  
Wanda listiani ◽  
Sri Rustiyanti ◽  
Fani Dila Sari ◽  
IBG Surya Peradantha

One of the cultural arts of the Papua Biak tribe that is still maintained in traditional ceremonies is the wor tradition and the making of karwar or korwar statues. Karwar statue as a shadow of the spirit and where Nin lives. The spirit of karwar or arawah gives the strength to look after the family, the garden, bring rain, keep away diseases and so on. The re-introduction of the karwar statue using AR technology is one way for young people to be interested in the existence of Biak tribal arts and culture. This study used a static visualization method that shows phenomena or processes in the form of a representation of the design path of the AR PASUA PA prototype model specifically the spatial and temporary entities of the AR Karwar Biak Papua Statue. The results of this study illustrate the modeling concept and procedure model developed in the design of the AR Karwar 4.0 prototype model by considering the needs of users and the problems of artists, connoisseurs and pedagogic of cultural arts learners, especially the cultural arts of Biak Papua


2020 ◽  
Author(s):  
Andrew P. Blair ◽  
Robert K. Hu ◽  
Elie N. Farah ◽  
Neil C. Chi ◽  
Katherine S. Pollard ◽  
...  

AbstractMotivationUnsupervised clustering of single-cell transcriptomics is a powerful method for identifying cell populations. Static visualization techniques for single-cell clustering only display results for a single resolution parameter. Analysts will often evaluate more than one resolution parameter, but then only report one.ResultsWe developed Cell Layers, an interactive Sankey tool for the quantitative investigation of gene expression, coexpression, biological processes, and cluster integrity across clustering resolutions. Cell Layers enhances the interpretability of single-cell clustering by linking molecular data and cluster evaluation metrics, to provide novel insight into cell populations.Availability and implementationUpon request


Author(s):  
M. Brédif ◽  
B. Vallet ◽  
B. Ferrand

Mobile Mapping Systems (MMS) are now commonly acquiring lidar scans of urban environments for an increasing number of applications such as 3D reconstruction and mapping, urban planning, urban furniture monitoring, practicability assessment for persons with reduced mobility (PRM)... MMS acquisitions are usually huge enough to incur a usability bottleneck for the increasing number of non-expert user that are not trained to process and visualize these huge datasets through specific softwares. A vast majority of their current need is for a simple 2D visualization that is both legible on screen and printable on a static 2D medium, while still conveying the understanding of the 3D scene and minimizing the disturbance of the lidar acquisition geometry (such as lidar shadows). The users that motivated this research are, by law, bound to precisely georeference underground networks for which they currently have schematics with no or poor absolute georeferencing. A solution that may fit their needs is thus a 2D visualization of the MMS dataset that they could easily interpret and on which they could accurately match features with their user datasets they would like to georeference. Our main contribution is two-fold. First, we propose a 3D point cloud stylization for 2D static visualization that leverages a Principal Component Analysis (PCA)-like local geometry analysis. By skipping the usual and error-prone estimation of a ground elevation, this rendering is thus robust to non-flat areas and has no hard-to-tune parameters such as height thresholds. Second, we implemented the corresponding rendering pipeline so that it can scale up to arbitrary large datasets by leveraging the Spark framework and its Resilient Distributed Dataset (RDD) and Dataframe abstractions.


Author(s):  
Kari-Jouko Räihä ◽  
Anne Aula ◽  
Päivi Majaranta ◽  
Harri Rantala ◽  
Kimmo Koivunen

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