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Fast encoding method for vector quantization by dynamically constructing subvectors

机译:动态构建子向量的向量量化快速编码方法

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The encoding speed of vector quantization (VQ) is an important problem for VQ's practical applications. Because a k-dimensional (k-D) vector can also be mathematically viewed as a k-element set so that the statistical analysis methods can be directly applied to k-D vectors. In order to approximately measure the difference between two k-D vectors, by using the well-known statistical features of the sum and the variance of a k-D vector first, the IEENNS method (S. Baek, et al., IEEE Signal Processing Letters, vol.4, pp.325-327, 1997) has been proposed to reject most of unlikely codewords for a certain input vector. Then, by dividing a k-D vector in half to generate its two corresponding (k/2)-D subvectors and then apply the IEENNS method again to each of the subvectors, a complete-version SIEENNS method (J.S. Pan, et al., IEEE Trans. Image Processing, voL12. pp.265-270, 2003) has been proposed as well. Because the SIEENNS method still has a large memory and computational redundancy, a simplified-version enhanced ESIEENNS method (Z. Pan et al., 2005 International Symposium on Circuits and Systems, pp.6332-6335, 2005) is reported recently. However, all of these subvector-based previous works just fixedly constructed its two subvectors for simplicity, which cannot guarantee a very high search performance. Instead, this paper proposes to dynamically construct the two subvectors more efficiently based on a criterion of |S/sub y,j/ - S/sub y,j/| /spl rArr/ max by offline analyzing the property of a codeword y/sub i/. Experimental results confirmed that the proposed DESIEENNS method can improve the total search efficiency to 79.9% /spl sim/ 88.7% compared to the latest ESIEENNS method for various input images.
机译:矢量量化(VQ)的编码速度是VQ实际应用中的重要问题。因为k维(k-D)向量也可以在数学上视为k个元素集,所以统计分析方法可以直接应用于k-D向量。为了大致测量两个kD向量之间的差异,首先使用kD向量的和和方差的众所周知的统计特征,使用IEENNS方法(S.Baek等人,IEEE Signal Processing Letters,vol。 (4,pp.325-327,1997)已经提出来拒绝某个输入矢量的大多数不太可能的码字。然后,将kD向量一分为二以生成其两个相应的(k / 2)-D子向量,然后将IEENNS方法再次应用于每个子向量,从而得到完整版本的SIEENNS方法(JS Pan等,IEEE还已经提出了Trans.Image Processing,vol.12,pp.265-270,2003)。由于SIEENNS方法仍具有较大的内存和计算冗余性,因此最近报道了一种简化版本的增强型ESIEENNS方法(Z. Pan等人,2005年国际电路与系统专题研讨会,第6332-6335页,2005年)。但是,所有这些基于子向量的先前工作都只是为简单起见而固定地构造了它的两个子向量,这不能保证很高的搜索性能。相反,本文提出基于| S / sub y,j /-S / sub y,j / |的准则更有效地动态构建两个子向量。 / spl rArr / max,通过离线分析代码字y / sub i /的属性来实现。实验结果证实,与最新的ESIEENNS方法相比,所提出的DESIEENNS方法可将各种输入图像的总搜索效率提高到79.9%/ spl sim / 88.7%。

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