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Domain classification using B#x002B;trees in fractal image compression

机译:分形图像压缩中使用B +树的域分类

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The computational complexity of fractal image compression is mainly because of the huge number of comparisons required to find a matching domain block corresponding to the range blocks within the image. Various schemes have been presented by researchers for domain classification which can lead to significant reduction in the time spent for range-domain matching. All the schemes propose to first separate domains into different classes and then select the appropriate class for matching with selected range block. Here, we propose a dynamic classification scheme based on local fractal dimensions. The method can be experimented with other features of image blocks measured locally. In this work we have investigated the computational efficiency of multi-way search trees for storing domain information. The domains can be listed in a B+ tree ordered on one or more selected local features of each domain.
机译:分形图像压缩的计算复杂度主要是因为需要大量比较才能找到与图像内范围块相对应的匹配域块。研究人员针对域分类提出了各种方案,可以显着减少用于范围域匹配的时间。所有方案都建议首先将域划分为不同的类别,然后选择适当的类别以与选定的范围块进行匹配。在这里,我们提出了一种基于局部分形维数的动态分类方案。该方法可以用局部测量的图像块的其他特征进行实验。在这项工作中,我们研究了用于存储域信息的多向搜索树的计算效率。这些域可以在B +树中列出,并按每个域的一个或多个选定局部特征排序。

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