Visual quality metrics have been recently devised to automatically extract interesting visual projections out of a large number of available candidates in the exploration of high-dimensional databases. The metrics permit for instance to search within a large set of scatter plots (e.g., in a scatter plot matrix) and select the views that contain the best separation among clusters. The rationale behind these techniques is that automatic selection of "best" views is not only useful but also necessary when the number of potential projections exceeds the limit of human interpretation. While useful as a concept in general, such metrics received so far limited validation in terms of human perception. In this paper we present a perceptual study inv...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Perceptual grouping processes are typically studied using sparse displays of spatially separated ele...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Visual quality metrics have been recently devised to automatically extract interesting visual projec...
Visual quality metrics have been recently devised to auto-matically extract interesting visual proje...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
This article presents an empirical user study that compares eight multidimensional projection techni...
This article presents an empirical user study that compares eight multidimensional projection techni...
This article presents an empirical user study that compares eight multidimensional projection techni...
This article presents an empirical user study that compares eight multidimensional projection techni...
A number of visual quality measures have been introduced in visual analytics literature in order to ...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Extracting meaningful information out of vast amounts of high-dimensional data is very difficult. Pr...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Perceptual grouping processes are typically studied using sparse displays of spatially separated ele...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...
Visual quality metrics have been recently devised to automatically extract interesting visual projec...
Visual quality metrics have been recently devised to auto-matically extract interesting visual proje...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
Visualization of high-dimensional data requires a mapping to a visual space. Whenever the goal is to...
This article presents an empirical user study that compares eight multidimensional projection techni...
This article presents an empirical user study that compares eight multidimensional projection techni...
This article presents an empirical user study that compares eight multidimensional projection techni...
This article presents an empirical user study that compares eight multidimensional projection techni...
A number of visual quality measures have been introduced in visual analytics literature in order to ...
Due to the technological progress over the last decades, today’s scientific and commercial applicati...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Extracting meaningful information out of vast amounts of high-dimensional data is very difficult. Pr...
Handling visual complexity is a challenging problem in visualization owing to the subjectiveness of ...
Perceptual grouping processes are typically studied using sparse displays of spatially separated ele...
Abstract—Visual exploration of multivariate data typically requires projection onto lower dimensiona...