CoronaViz: Visualizing Multilayer Spatiotemporal COVID-19 Data with Animated Geocircles

11/10/2022
by   Brian Ondov, et al.
0

While many dashboards for visualizing COVID-19 data exist, most separate geospatial and temporal data into discrete visualizations or tables. Further, the common use of choropleth maps or space-filling map overlays supports only a single geospatial variable at once, making it difficult to compare the temporal and geospatial trends of multiple, potentially interacting variables, such as active cases, deaths, and vaccinations. We present CoronaViz, a COVID-19 visualization system that conveys multilayer, spatiotemporal data in a single, interactive display. CoronaViz encodes variables with concentric, hollow circles, termed geocircles, allowing multiple variables via color encoding and avoiding occlusion problems. The radii of geocircles relate to the values of the variables they represent via the psychophysically determined Flannery formula. The time dimension of spatiotemporal variables is encoded with sequential rendering. Animation controls allow the user to seek through time manually or to view the pandemic unfolding in accelerated time. An adjustable time window allows aggregation at any granularity, from single days to cumulative values for the entire available range. In addition to describing the CoronaViz system, we report findings from a user study comparing CoronaViz with multi-view dashboards from the New York Times and Johns Hopkins University. While participants preferred using the latter two dashboards to perform queries with only a geospatial component or only a temporal component, participants uniformly preferred CoronaViz for queries with both spatial and temporal components, highlighting the utility of a unified spatiotemporal encoding. CoronaViz is open-source and freely available at http://coronaviz.umiacs.io.

READ FULL TEXT

page 5

page 10

page 13

research
08/10/2022

A Comparison of Spatiotemporal Visualizations for 3D Urban Analytics

Recent technological innovations have led to an increase in the availabi...
research
07/15/2019

A Comparison of Visualizations for Identifying Correlation over Space and Time

Observing the relationship between two or more variables over space and ...
research
08/03/2020

Characterizing Communities of Hashtag Usage on Twitter During the 2020 COVID-19 Pandemic by Multi-view Clustering

The COVID-19 pandemic has produced a flurry of online activity on social...
research
03/08/2021

A Review of Spatiotemporal Models for Count Data in R Packages. A Case Study of COVID-19 Data

Spatio-temporal models for count data are required in a wide range of sc...
research
09/03/2020

Understanding User Experience of COVID-19 Maps through Remote Elicitation Interviews

During the coronavirus pandemic, visualizations gained a new level of po...
research
12/30/2022

Covid-19 Analysis Using Tensor Methods

In this paper, we use tensor models to analyze Covid-19 pandemic data. F...

Please sign up or login with your details

Forgot password? Click here to reset