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Combining fractal image compression and vector quantization

机译:结合分形图像压缩和矢量量化

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In fractal image compression, the code is an efficient binary representation of a contractive mapping whose unique fixed point approximates the original image. The mapping is typically composed of affine transformations, each approximating a block of the image by another block (called domain block) selected from the same image. The search for a suitable domain block is time-consuming. Moreover, the rate distortion performance of most fractal image coders is not satisfactory. We show how a few fixed vectors designed from a set of training images by a clustering algorithm accelerates the search for the domain blocks and improves both the rate-distortion performance and the decoding speed of a pure fractal coder, when they are used as a supplementary vector quantization codebook. We implemented two quadtree-based schemes: a fast top-down heuristic technique and one optimized with a Lagrange multiplier method. For the 8 bits per pixel (bpp) luminance part of the 512/spl kappa/512 Lena image, our best scheme achieved a peak-signal-to-noise ratio of 32.50 dB at 0.25 bpp.
机译:在分形图像压缩中,代码是收缩映射的有效二进制表示,其唯一固定点近似于原始图像。映射通常由仿射变换组成,每个仿射变换都用从同一图像中选择的另一个块(称为域块)来近似图像的一个块。寻找合适的域块非常耗时。而且,大多数分形图像编码器的速率失真性能并不令人满意。我们展示了通过聚类算法从一组训练图像中设计的一些固定向量如何将它们用作补充时如何加快对域块的搜索并提高速率失真性能和纯分形编码器的解码速度向量量化码本。我们实现了两种基于四叉树的方案:一种快速的自上而下的启发式技术,以及一种采用拉格朗日乘数法进行优化的方案。对于512 / spl kappa / 512 Lena图像的每像素8位(bpp)亮度部分,我们的最佳方案在0.25 bpp时实现了32.50 dB的峰值信噪比。

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