组合源自适应和信道优化矩阵量化算法

V. Bozantzis, P. Philippopoulos
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引用次数: 0

摘要

矩阵量化(MQ)是一种很有前途的信源编码技术,已成功应用于语音信号和无噪声信道。文献中也显示,当应用于噪声信道时,MQ的性能优于矢量量化(VQ)。考虑到大多数实际应用的信源是非平稳的,本文介绍了一种使MQ适应不同信源统计量的技术,并对有噪声信道的MQ进行了优化,从而设计了一种同时考虑非平稳信源和有噪声信道统计量的矩阵量化/解码器。在无记忆二进制对称信道(BSC)上,对源建模为非平稳维纳过程的源进行了评价,得到了源自适应和信道优化矩阵量化组合算法(CSACOMQ)。结果表明,与信道优化矩阵量化(COMQ)相比,CSACOMQ提供了实质性的信噪比(SNR)性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Combined Source Adaptive and Channel Optimized Matrix Quantization algorithm
Matrix Quantization (MQ), a very promising source coding technique, has already been successfully applied for speech signals and noiseless channels. MQ is also shown in the literature to outperform Vector Quantization (VQ) when applied over noisy channels. Considering that most sources of practical interest are non-stationary, this paper introduces a technique which adapts MQ to varying source statistics and optimizes MQ for noisy channels, thus designs a matrix quantizer/decoder that considers both non-stationary source and noisy channel statistics. The resulting algorithm, Combined Source Adaptive and Channel Optimized Matrix Quantization (CSACOMQ) is evaluated for a source modelled as the non-stationary Wiener process and over the memoryless Binary Symmetric Channel (BSC). It is shown that CSACOMQ offers substantial Signal-to-Noise Ratio (SNR) performance improvement compared to the Channel Optimized Matrix Quantization (COMQ).
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