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Fast Encoding Method for Image Vector Quantization Based on Multiple Appropriate Features to Estimate Euclidean Distance

机译:基于多个合适特征估计欧氏距离的图像矢量量化快速编码方法

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摘要

The encoding process of finding the best-matched codeword (winner) for a certain input vector in image vector quantization (VQ) is computationally very expensive due to a lot of k-dimensional Euclidean distance computations. In order to speed up the VQ encoding process, it is beneficial to firstly estimate how large the Euclidean distance is between the input vector and a candidate codeword by using appropriate low dimensional features of a vector instead of an immediate Euclidean distance computation. If the estimated Euclidean distance is large enough, it implies that the current candidate codeword could not be a winner so that it can be rejected safely and thus avoid actual Euclidean distance computation. Sum (1-D), L 2 norm (1-D) and partial sums (2-D) of a vector are used together as the appropriate features in this paper because they are the first three simplest features. Then, four estimations of Euclidean distance between the input vector and a codeword are connected to each other by the Cauchy–Schwarz inequality to realize codeword rejection. For typical standard images with very different details (Lena, F-16, Pepper and Baboon), the final remaining must-do actual Euclidean distance computations can be eliminated obviously and the total computational cost including all overhead can also be reduced obviously compared to the state-of-the-art EEENNS method meanwhile keeping a full search (FS) equivalent PSNR.
机译:由于大量的k维欧几里德距离计算,在图像矢量量化(VQ)中为某个输入矢量找到最匹配的码字(优胜者)的编码过程在计算上非常昂贵。为了加快VQ编码过程,首先通过使用向量的适当低维特征而不是立即进行欧氏距离计算,首先估计输入向量与候选码字之间的欧氏距离有多大是有益的。如果估计的欧几里得距离足够大,则表明当前候选码字不能成为赢家,因此可以安全地拒绝它,从而避免了实际的欧几里得距离计算。本文中,向量的和(1-D),L 2 范数(1-D)和部分和(2-D)一起用作适当的特征,因为它们是前三个最简单的特征。然后,通过Cauchy-Schwarz不等式将输入矢量和码字之间的欧几里德距离的四个估计彼此连接,以实现码字拒绝。对于具有非常不同细节的典型标准图像(Lena,F-16,Pepper和Baboon),可以明显地消除最终剩余的必须做的实际欧几里德距离计算,并且与之相比,包括所有开销的总计算成本也可以明显降低。最先进的EEENNS方法,同时保持全搜索(FS)等效PSNR。

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