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首页> 外文期刊>IEEE Transactions on Vehicular Technology >Robust Transmission of Multistage Vector Quantized Sources Over Noisy Communication Channels—Applications to MELP Speech Codec
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Robust Transmission of Multistage Vector Quantized Sources Over Noisy Communication Channels—Applications to MELP Speech Codec

机译:噪声通信信道上多级矢量量化源的鲁棒传输—在MELP语音编解码器中的应用

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摘要

Joint source-channel coding is an effective approach for the design of bandwidth efficient and error resilient communication systems with manageable complexity. An interesting research direction within this framework is the design of source decoders that exploit the residual redundancy for effective signal reconstruction at the receiver. Such source decoders are expected to replace the traditionally heuristic error concealment units that are elements of most multimedia communication systems. In this paper, we consider the reconstruction of signals encoded with a multistage vector quantizer (MSVQ) and transmitted over a noisy communications channel. The MSVQ maintains a moderate complexity and, due to its successive refinement feature, is a suitable choice for the design of layered (progressive) source codes. An approximate minimum mean squared error source decoder for MSVQ is presented, and its application to the reconstruction of the linear predictive coefficient (LPC) parameters in mixed excitation linear prediction (MELP) speech codec is analyzed. MELP is a low-rate standard speech codec suitable for bandwidth-limited communications and wireless applications. Numerical results demonstrate the effectiveness of the proposed schemes
机译:联合源信道编码是一种有效的方法,可用于设计带宽可控且具有可管理复杂性的抗差错通信系统。在此框架内,一个有趣的研究方向是源解码器的设计,该源解码器利用残余冗余在接收机处进行有效的信号重建。期望这种源解码器将取代传统的启发式错误隐藏单元,而传统的启发式错误隐藏单元是大多数多媒体通信系统的组成部分。在本文中,我们考虑了使用多级矢量量化器(MSVQ)编码并在嘈杂的通信信道上传输的信号的重构。 MSVQ保持适度的复杂性,并且由于其连续的改进功能,因此是分层(渐进)源代码设计的合适选择。提出了一种用于MSVQ的近似最小均方误差源解码器,并分析了其在混合激励线性预测(MELP)语音编解码器中线性预测系数(LPC)参数重构的应用。 MELP是适用于带宽受限的通信和无线应用的低速率标准语音编解码器。数值结果证明了所提方案的有效性

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