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Neural gas based 3D normal mesh compression

机译:基于神经气体的3D法向网格压缩

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The recent widespread of processing and transmitting 3D model in various fields such as computer graphics, animations and visualization calls an essential need for efficient geometry mesh compression technique that became more crucial. This paper explores a progressive compression technique for 3D normal meshes geometry by utilizing one of competitive learning methods. The introduced technique is based on multi-resolution decomposition which was obtained by wavelet transformation. Then the coefficients are quantized by neural gas algorithm as a vector quantizer which improves the visual quality of the reconstructed geometry mesh. Our experiments show that the explored technique out performs the state-of-art techniques in Terms of visual quality of compressed meshes.
机译:最近在诸如计算机图形学,动画和可视化等各个领域中广泛地处理和传输3D模型,这迫切需要高效的几何网格压缩技术,这一技术变得更加关键。本文利用一种竞争性学习方法,探索了一种用于3D法向网格的渐进压缩技术。引入的技术基于通过小波变换获得的多分辨率分解。然后,系数通过神经气体算法作为矢量量化器进行量化,从而提高了重建的几何网格的视觉质量。我们的实验表明,所探索的技术在压缩网格的视觉质量方面表现出了最先进的技术。

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