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The progressive mesh compression based on meaningful segmentation

机译:基于有意义的分割的渐进式网格压缩

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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 decompositionrnalgorithm, 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.
机译:如今,网格有意义的分割(也称为形状分解)和渐进式压缩都是基本的重要问题,并且借助补丁类型分割开发了一些压缩算法。但是,几乎没有关注网格压缩和有意义的分割的有效组合。在本文中,为了实现自适应选择性可访问性和合理的压缩率,我们将原始网格划分为有意义的部分,并通过有效的压缩算法对每个部分进行编码。在我们的方法中,模型的分割是通过基于特征的新分解算法获得的,该算法利用显着特征轮廓来解析对象。此外,逐行压缩是一种改进的度驱动方法,其在几何编码中采用了多粒度量化方法以获得更高的压缩率。我们提供的证据表明,所提出的组合在许多应用中都可能是有益的,例如依赖于视图的渲染和以压缩形式传输大网格。

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