New Fast and Robust Stochastic Algorithm of Two Stage Vector Quantization for Joint Source-Channel Speech Coding for Any Transmission Channel

V. Garcia, A. Ramirez
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Abstract

A new algorithm of two stage vector quantization for joint source-channel speech coding for any transmission channels is presented. The computational complexity is only slightly higher than the most widely used multi stage vector quantization algorithm (MSVQ). This new algorithm improves the characteristics and the results of a sequential quantizer of two stages. The base of this algorithm is the modification of the well-known GS-RGSKAepsiv algorithm (reduced complexity generalized stochastic K-means algorithm of great speed) for a non-stationary channel. This new algorithm is optimal for the joint construction of two stages. The main features of the proposed algorithm are as follows: 1) Due to its stochastic nature it avoids being trapped in poor local minimums. 2) Initial codebooks are not needed; the codevectors move away from the gravity center of the training vectors towards their final position. 3) Source coding and channel coding are jointly optimized to obtain robust codebooks for different levels of noise in transmission channels. 4) The reduction of calculation time is based on geometric considerations and memory management. This algorithm allows to design the codebook orderly due to its advantageous convergence properties. The results showed that the algorithm needs only 8 to 16% of the number of mathematical operations in comparison with the operations required by others propositions for full search of MSQV, either stationary or non-stationary channels
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一种用于任意信道联合源信道语音编码的快速鲁棒随机两级矢量量化算法
提出了一种适用于任意传输信道的源信道联合语音编码的两级矢量量化算法。计算复杂度仅略高于最广泛使用的多阶段矢量量化算法(MSVQ)。该算法改进了两级序贯量化器的特性和结果。该算法的基础是对著名的GS-RGSKAepsiv算法(快速降低复杂度的广义随机k -均值算法)进行改进,用于非平稳信道。该算法对于两阶段的联合施工是最优的。该算法的主要特点如下:1)由于其随机性,避免了陷入较差的局部极小值。2)不需要初始码本;协矢量从训练向量的重心向最终位置移动。3)对信源编码和信道编码进行联合优化,得到传输信道中不同噪声水平下的鲁棒码本。4)计算时间的减少是基于几何考虑和内存管理。该算法具有良好的收敛性,可以有序地设计码本。结果表明,与其他命题相比,该算法对MSQV进行完全搜索所需的数学运算次数仅为8 ~ 16%,无论是平稳信道还是非平稳信道
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