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A Pattern-Based Residual Vector Quantization (PBRVQ) algorithm for compressing images

机译:基于模式的残差矢量量化(PBRVQ)算法压缩图像

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We develop and test a new, two-stage, residual vector quantization algorithm using variable bit-rate encoding. In the first stage, we partition the input image into non-overlapping blocks, vector-quantize and code them by a small codebook using the well-known K-means algorithm. The novelty in this method is the use of high eigen-valued blocks as initial seeds which serve as good distributors in the formation of clusters and fast convergence. We compute the residual vectors and classify them based on threshold values of distortion and variance. Vectors above the given threshold require second-stage coding. In the second stage, we partition the residual vectors further into small sub blocks and scalar-quantize each sub block to form number patterns instead of performing direct vector quantization (DVQ). These number patterns, which form the secondary codebook, are easily generated without complex calculations by applying basic ideas from combinatorics. Both the intra-block and inter-block correlation properties have been exploited to enhance the compression rate. This method offers several advantages: 1) the computational complexity is greatly reduced; 2) exhaustive comparisons in DVQ are carried out more efficiently; 3) the picture quality of the reconstructed image is not compromised; and, 4) a reduced bit-rate is achieved.
机译:我们开发并测试了一种使用可变比特率编码的新的两阶段残差矢量量化算法。在第一阶段,我们将输入图像划分为不重叠的块,进行矢量量化,然后使用众所周知的K-means算法通过一本小码本对它们进行编码。这种方法的新颖之处在于使用了高特征值的块作为初始种子,这些种子在簇的形成和快速收敛中充当了良好的分配者。我们计算残差矢量,并根据失真和方差的阈值对其进行分类。高于给定阈值的向量需要第二阶段编码。在第二阶段,我们将残差矢量进一步划分为小的子块,并对每个子块进行标量量化以形成数字模式,而不是执行直接矢量量化(DVQ)。这些数字模式构成了第二码本,可以通过应用组合语言的基本思想轻松生成而无需复杂的计算。块内和块间相关属性均已被利用以提高压缩率。该方法具有以下优点:1)大大降低了计算复杂度; 2)DVQ中的详尽比较可以更有效地进行; 3)重建图像的图像质量不受影响; 4)降低了比特率。

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