Kim C S, Kim R C, Lee S U
IEEE Trans Image Process. 1998;7(11):1598-602. doi: 10.1109/83.725366.
We investigate the relation between VQ (vector quantization) and fractal image coding techniques, and propose a novel algorithm for still image coding, based on fractal vector quantization (FVQ). In FVQ, the source image is approximated coarsely by fixed basis blocks, and the codebook is self-trained from the coarsely approximated image, rather than from an outside training set or the source image itself. Therefore, FVQ is capable of eliminating the redundancy in the codebook without any side information, in addition to exploiting the self-similarity in real images effectively. The computer simulation results demonstrate that the proposed algorithm provides better peak signal-to-noise ratio (PSNR) performance than most other fractal-based coders.
我们研究了矢量量化(VQ)与分形图像编码技术之间的关系,并提出了一种基于分形矢量量化(FVQ)的静止图像编码新算法。在FVQ中,源图像由固定的基块进行粗略近似,码本是从粗略近似图像中自训练得到的,而不是从外部训练集或源图像本身。因此,FVQ除了能有效利用真实图像中的自相似性外,还能够在无需任何辅助信息的情况下消除码本中的冗余。计算机仿真结果表明,该算法比大多数其他基于分形的编码器具有更好的峰值信噪比(PSNR)性能。