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Efficient codebook search for vector quantization: exploiting inherent codebook structure

机译:用于矢量量化的高效码本搜索:利用固有码本结构

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Abstract: A major problem associated with vector quantization is the complexity of exhaustive codebook search. This problem has hindered the use of this powerful technique for lossy image compression. An exhaustive codebook search requires that an input vector be compared against each code vector in the codebook in order to find the code vector that yields the minimum distortion. Because an exhaustive search does not capitalize on any underlying structure of the code vectors in hyperspace, other researchers have proposed technique that exploit codebook structure, but these technique typically result in sub-optimal distortion. We propose a new method that exploits the nearest neighbor structure of code vectors and significantly reduces the number of computations required in the search process. However, this technique does not introduce additional distortion, and is thus optimal. Our method requires a one time precomputation and a small increase in the memory required to store the codebook. In the best case, arising when the code vectors are largely dispersed in the hyperspace, our method requires only partial search of the codewords. In the worst case, our method requires a full search of the codebook. Since the method depends on the structure of the code vectors in the hyperspace, it is difficult to determine its efficiency in all cases, but test on typical image compression tasks have shown that this method offers on average an 81.16 percent reduction in the total number of multiples, additions and subtractions required as compared to full search. !12
机译:摘要:与矢量量化相关的主要问题是穷举码本搜索的复杂性。这个问题阻碍了使用这种强大的技术进行有损图像压缩。详尽的代码本搜索要求将输入向量与代码本中的每个代码向量进行比较,以便找到产生最小失真的代码向量。由于穷举搜索没有利用超空间中代码矢量的任何基础结构,因此其他研究人员提出了利用码本结构的技术,但是这些技术通常会导致次优失真。我们提出了一种新方法,该方法利用代码矢量的最近邻结构并显着减少搜索过程中所需的计算数量。但是,该技术不会引入额外的失真,因此是最佳的。我们的方法需要进行一次预计算,并且只需要一点点增加存储代码簿所需的内存即可。最好的情况是,当代码向量主要分散在超空间中时,我们的方法只需要部分搜索代码字即可。在最坏的情况下,我们的方法需要完整搜索密码本。由于该方法取决于超空间中代码矢量的结构,因此很难在所有情况下确定其效率,但是对典型图像压缩任务的测试表明,该方法平均可减少81.16%的总压缩量。与完全搜索相比所需的倍数,加法和减法。 !12

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