In this work, we present an effective and scalable system for multivariate volume data visualization and analysis with a novel Transfer Function (TF) interface design that tightly couples parallel coordinates plots (PCP) and MDS-based dimension projection plots. In our system, the PCP visualizes the data distribution of each variate and the MDS plots project features. Together, they are integrated seamlessly to provide flexible feature classification without context switching between different data presentations during the user interaction. The proposed interface enables users to identify relevant correlation clusters and assign optical properties on them. To further support large scale multivariate volume data visualization and analysis, w...
temperature pressure Subspace View Navigation Panel Figure 1: An example of the semi-automatic trans...
A central topic in scientific visualization is the transfer function (TF) for volume rendering. The ...
Abstract—In recent years, there has been an exponential increase in the amount of data being produce...
In this paper, we present an effective and scalable system for multivariate volume data visualizatio...
Abstract—In this paper, we present an effective and scalable system for multivariate volume data vis...
Figure 1: Volume visualization of multivariate data (Hurricane Isabel) with our proposed interface o...
In this paper, we present an effective transfer function (TF) design for multivariate volume, provid...
Abstract—Volumetric datasets with multiple variables on each voxel over multiple time steps are ofte...
Data can be found everywhere, for example in the form of price, size, weight and colour of all produ...
pre-printWe propose a multivariate volume visualization framework that tightly couples dynamic proje...
Figure 1: The user interface and the work flow of the system implementing our proposed method. Four ...
Parallel coordinate plots (PCPs) are commonly used in information visualization to provide insight i...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
The emergence of web-based scientific simulation portals has enabled scientists to quickly generate ...
Most direct volume renderings produced today employ onedimensional transfer functions, which assign ...
temperature pressure Subspace View Navigation Panel Figure 1: An example of the semi-automatic trans...
A central topic in scientific visualization is the transfer function (TF) for volume rendering. The ...
Abstract—In recent years, there has been an exponential increase in the amount of data being produce...
In this paper, we present an effective and scalable system for multivariate volume data visualizatio...
Abstract—In this paper, we present an effective and scalable system for multivariate volume data vis...
Figure 1: Volume visualization of multivariate data (Hurricane Isabel) with our proposed interface o...
In this paper, we present an effective transfer function (TF) design for multivariate volume, provid...
Abstract—Volumetric datasets with multiple variables on each voxel over multiple time steps are ofte...
Data can be found everywhere, for example in the form of price, size, weight and colour of all produ...
pre-printWe propose a multivariate volume visualization framework that tightly couples dynamic proje...
Figure 1: The user interface and the work flow of the system implementing our proposed method. Four ...
Parallel coordinate plots (PCPs) are commonly used in information visualization to provide insight i...
Numerous multivariate visualization techniques and systems have been developed in the past three dec...
The emergence of web-based scientific simulation portals has enabled scientists to quickly generate ...
Most direct volume renderings produced today employ onedimensional transfer functions, which assign ...
temperature pressure Subspace View Navigation Panel Figure 1: An example of the semi-automatic trans...
A central topic in scientific visualization is the transfer function (TF) for volume rendering. The ...
Abstract—In recent years, there has been an exponential increase in the amount of data being produce...