Abstract:
The process of transfer function generation is a crucial step in the direct volume rendering
pipeline. The transfer function is responsible for setting visual properties such as color
and transparency for each voxel in the volumetric data set. Therefore, it is considered
the most important part of the direct volumetric rendering process, as it is a complex
process and takes a long time. That is why the transfer function is the process that
potentially determines the efficiency of the volume rendering process as a whole.
In this thesis, we proposed an automatic design of a transfer function based on
the similarity of features of volumetric data, where the features of volumetric data are
extracted through the similarity between iso-surfaces. Then, we classified these features
through the affinity propagation algorithm to automatically extract the optimal number
of clusters that best reflect these features.
The efficiency of the proposed system is demonstrated by its accuracy in exploring
the features of volumetric data and its ability to classify them automatically without
the need of user intervention or pre-define the number of clusters
Description:
CD, no of pages 70, ماجستير معلوماتية 2/2024, 31639