一种新的动态网格序列压缩框架

Bailin Yang, Zhaoyi Jiang, Yan Tian, Jiantao Shangguan, Chao Song, Yibo Guo, Mingliang Xu
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引用次数: 1

摘要

在这项工作中,描述了一种新的三维(3D)网格序列压缩框架,适用于逐行流。该方法首先实现了一种基于枢轴顶点轨迹曲率的时间帧聚类算法。然后,采用去相关方法去除x、y、z坐标上的数据冗余。其次,为了减少网格序列数据量,使用主成分分析(PCA)压缩每个聚类中的顶点运动轨迹数据。将不同主分量得到的x、y、z坐标系数作为网格信号,进行谱图小波变换(SGWT)处理。最后,对得到的小波系数进行CSPECK编码。通过从编码器传输不同位面的数据,将三维网格序列编码成多分辨率序列。实验结果表明,该方法可以实现网格序列的逐级流化。此外,结果还表明,该方法在存储空间要求和最小化重构误差方面优于现有方法
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A Novel Dynamic Mesh Sequence Compression Framework for Progressive Streaming
In this work, a novel three-dimensional (3D) mesh sequence compression framework suitable for progressive streaming is described. The proposed approach first implements a temporal frame-clustering algorithm based on the curvature of pivot vertex trajectory. Then, a decorrelation method is used to remove the redundancy of data in x, y, and z coordinates. Next, to reduce the amount of mesh sequence data, the vertex motion trajectory data in each cluster is compressed using principal component analysis (PCA). Further, the coefficients of x, y and z coordinates obtained from different principal components are considered as mesh signals, which are processed by a spectral graph wavelet transform(SGWT). Finally, the obtained wavelet coefficients are encoded using CSPECK. By transmitting data on different bit-planes from encoder, a 3D mesh sequence is encoded into a multi-resolution sequence. Experimental results show that the proposed method can realize progressive streaming of mesh sequence. Furthermore, the results also show that the proposed approach outperforms state-of-the-art methods in terms of storage space requirement and minimizing the reconstruction error
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