Expression-invariant and sparse representation for mesh-based compression for 3-D face models

Junhui Hou, Lap-Pui Chau, Ying He, N. Magnenat-Thalmann
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引用次数: 2

Abstract

Compression of mesh-based 3-D models has been an important issue, which ensures efficient storage and transmission. In this paper, we present a very effective compression scheme specifically for expression variation 3-D face models. Firstly, 3-D models are mapped into 2-D parametric domain and corresponded by expression-invariant parameterizaton, leading to 2-D image format representation namely geometry images, which simplifies the 3-D model compression into 2-D image compression. Then, sparse representation with learned dictionaries via K-SVD is applied to each patch from sliced GI so that only few coefficients and their indices are needed to be encoded, leading to low datasize. Experimental results demonstrate that the proposed scheme provides significant improvement in terms of compression performance, especially at low bitrate, compared with existing algorithms.
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基于网格的三维人脸模型压缩的表达式不变和稀疏表示
基于网格的三维模型的压缩一直是一个重要的问题,它保证了高效的存储和传输。在本文中,我们提出了一个非常有效的压缩方案,特别是表情变化的三维人脸模型。首先,将三维模型映射到二维参数域,通过不变表达式参数化进行对应,得到二维图像格式表示即几何图像,将三维模型压缩简化为二维图像压缩;然后,通过K-SVD将学习字典的稀疏表示应用于切片GI的每个patch,这样只需要编码很少的系数及其索引,从而导致低数据化。实验结果表明,与现有算法相比,该方案在压缩性能方面有显著提高,特别是在低比特率下。
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