The progressive mesh compression based on meaningful segmentation
Zhi-Quan Cheng, Hua-Feng Liu, Shi-Yao Jin
In The Visual Computer, 23(9-11), September 2007.
Abstract: Nowadays, both mesh meaningful segmentation (also called shape decomposition) and progressive compression are fundamental important problems, and some compression algorithms have been developed with the help of patch-type segmentation. However, little attention has been paid to the effective combination of mesh compression and meaningful segmentation. In this paper, to accomplish both adaptive selective accessibility and a reasonable compression ratio, we break down the original mesh into meaningful parts and encode each part by an efficient compression algorithm. In our method, the segmentation of a model is obtained by a new feature-based decomposition algorithm, which makes use of the salient feature contours to parse the object. Moreover, the progressive compression is an improved degree-driven method, which adapts a multi-granularity quantization method in geometry encoding to obtain a higher compression ratio. We provide evidence that the proposed combination can be beneficial in many applications, such as view-dependent rendering and streaming of large meshes in a compressed form.
Keyword(s): Mesh compression, Progressive, Meaningful segmentation, View-dependent
@article{Cheng:2007:TPM,
author = {Zhi-Quan Cheng and Hua-Feng Liu and Shi-Yao Jin},
title = {The progressive mesh compression based on meaningful segmentation},
journal = {The Visual Computer},
volume = {23},
number = {9-11},
pages = {651--660},
month = sep,
year = {2007},
}
Return to the search page.
graphbib: Powered by "bibsql" and "SQLite3."