Title :
Volume-Preserving Mapping and Registration for Collective Data Visualization
Author :
Jiaxi Hu ; Zou, Guangyu Jeff ; Jing Hua
Author_Institution :
Dept. of Comput. Sci., Wayne State Univ., Detroit, MI, USA
Abstract :
In order to visualize and analyze complex collective data, complicated geometric structure of each data is desired to be mapped onto a canonical domain to enable map-based visual exploration. This paper proposes a novel volume-preserving mapping and registration method which facilitates effective collective data visualization. Given two 3-manifolds with the same topology, there exists a mapping between them to preserve each local volume element. Starting from an initial mapping, a volume restoring diffeomorphic flow is constructed as a compressible flow based on the volume forms at the manifold. Such a flow yields equality of each local volume element between the original manifold and the target at its final state. Furthermore, the salient features can be used to register the manifold to a reference template by an incompressible flow guided by a divergence-free vector field within the manifold. The process can retain the equality of local volume elements while registering the manifold to a template at the same time. An efficient and practical algorithm is also presented to generate a volume-preserving mapping and a salient feature registration on discrete 3D volumes which are represented with tetrahedral meshes embedded in 3D space. This method can be applied to comparative analysis and visualization of volumetric medical imaging data across subjects. We demonstrate an example application in multimodal neuroimaging data analysis and collective data visualization.
Keywords :
biomedical imaging; data analysis; data visualisation; neurophysiology; topology; 3-manifolds; 3D space; canonical domain; collective data visualization; compressible flow; discrete 3D volumes; divergence-free vector field; incompressible flow; initial mapping; local volume element; map-based visual exploration; multimodal neuroimaging data analysis; reference template; salient feature registration; salient features; tetrahedral meshes; volume restoring diffeomorphic flow; volume-preserving mapping; volume-preserving registration; volumetric medical imaging data visualization; Complexity theory; Data visualization; Information analysis; Shape analysis; Three-dimensional displays; Volume measurement; Volume-preserving mapping; data regularization; data transformation;
Journal_Title :
Visualization and Computer Graphics, IEEE Transactions on
DOI :
10.1109/TVCG.2014.2346457