Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) often exhibit varied distribution patterns at multiple spatial scales. Examining these patterns across different scales enhances the understanding from global to local perspectives and offers new insights into the nature of various spatial phenomena. Conventional navigation techniques in such multi-scale data-rich spaces are often inefficient, require users to choose between an overview or detailed information, and do not support identifying spatial patterns at varying scales. In this work, we present a context-preserving visual analytics technique that aggregates spatial datasets into hierarchical clusters and visualizes the multi-scale aggre...
International audienceWe present Bristle Map, a novel method for the aggregation, abstraction, and s...
Visualizing large geo-demographical data sets using pixel-based techniques involves mapping the geo-...
The visualization of large spatial point data sets constitutes a problem with respect to runtime and...
Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) o...
With the increase in community-contributed data availability, citizens and analysts are interested i...
Compositional geospatial data can be visualized as dot maps, where the color of each dot represents ...
International audienceWe present a model for building, visualizing, and interacting with multiscale ...
Interactive visual analysis is the process of collecting insights about a dataset, while using one o...
This paper addresses the problem of reducing cluttering in interactive maps. It presents a new techn...
Visual analytics is an interdisciplinary field that facilitates the analysis of the large volume of ...
abstract: Traditionally, visualization is one of the most important and commonly used methods of gen...
When exploring large spatial datasets, zooming and panning interactions often lead to the loss of co...
Many applications using spatially aggregated data tend to treat the spatial units as given. For exam...
<p>Across a wide variety of digital devices, users create, consume, and disseminate large quantities...
Movement data (trajectories of moving agents) are hard to visualize: numerous intersections and over...
International audienceWe present Bristle Map, a novel method for the aggregation, abstraction, and s...
Visualizing large geo-demographical data sets using pixel-based techniques involves mapping the geo-...
The visualization of large spatial point data sets constitutes a problem with respect to runtime and...
Spatial datasets (i.e., location-based social media, crime incident reports, and demographic data) o...
With the increase in community-contributed data availability, citizens and analysts are interested i...
Compositional geospatial data can be visualized as dot maps, where the color of each dot represents ...
International audienceWe present a model for building, visualizing, and interacting with multiscale ...
Interactive visual analysis is the process of collecting insights about a dataset, while using one o...
This paper addresses the problem of reducing cluttering in interactive maps. It presents a new techn...
Visual analytics is an interdisciplinary field that facilitates the analysis of the large volume of ...
abstract: Traditionally, visualization is one of the most important and commonly used methods of gen...
When exploring large spatial datasets, zooming and panning interactions often lead to the loss of co...
Many applications using spatially aggregated data tend to treat the spatial units as given. For exam...
<p>Across a wide variety of digital devices, users create, consume, and disseminate large quantities...
Movement data (trajectories of moving agents) are hard to visualize: numerous intersections and over...
International audienceWe present Bristle Map, a novel method for the aggregation, abstraction, and s...
Visualizing large geo-demographical data sets using pixel-based techniques involves mapping the geo-...
The visualization of large spatial point data sets constitutes a problem with respect to runtime and...