Fuzzy Feature Visualization of Vector Field by Entropy-Based Texture Adaptation
Texture control is a challenging issue in texture-based feature visualization. In order to visualize as more information as we can, this paper presents a texture adaptation technique for fuzzy feature visualization of 3D vector field, taking into account information quantity carried by vector field and texture based on extended information entropy. Two definitions of information measurement for 3D vector field and noise texture, MIE and RNIE, are proposed to quantitatively represent the information carried by them. A noise generation algorithm based on three principles derived from minimal differentia of MIE and RNIE is designed to obtain an approximately optimal distribution of noise fragments which shows more details than those used before. A discussion of results is included to demonstrate our algorithm which leads to a more reasonable visualization results based on fuzzy feature measurement and information quantity.
Scientific visualization vector field texture adaptation fuzzy feature extraction extended information entropy
Huai-Hui Wang Hua-Xun Xu Liang Zeng Si-Kun Li
School of Computer National University of Defense Technology, NUDT Changsha, China
国内会议
北京
英文
1-4
2011-11-04(万方平台首次上网日期,不代表论文的发表时间)