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On quantizer design for Distributed Source Coding of Gaussian vector data with packet loss

机译:带丢包的高斯矢量数据分布式源编码量化设计

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Distributed Source Coding (DSC) has been widely studied in applications such as video coding and distributed sensor networks. However, DSC has not been widely explored for low delay and low bit rate applications such as quantization of speech Line Spectral Frequencies (LSFs). This is due to the difficulty of modeling and analyzing the effects of imperfect side information resulting from the previous packet losses, quantization noise and decoding errors. In this paper, we present methods for modeling, analyzing and designing Wyner-Ziv(WZ) quantizers for jointly Gaussian vector data with imperfect side information. In particular, we show the decomposition of the quantizer design problem for the vector data into independent scalar design subproblems. Then we demonstrate the analytical techniques to compute the optimum step size and bit allocation for each scalar dimension to minimize the decoder expected Mean Squared Error(MSE). The simulation results verify the analytical results obtained in this paper.
机译:分布式源编码(DSC)已在诸如视频编码和分布式传感器网络等应用中得到广泛研究。但是,对于诸如语音线频谱频率(LSF)量化之类的低延迟和低比特率应用,尚未广泛探索DSC。这是由于难以建模和分析由先前的数据包丢失,量化噪声和解码错误导致的不完善的边信息的影响。在本文中,我们提出了用于建模,分析和设计带有不完善边信息的联合高斯矢量数据的Wyner-Ziv(WZ)量化器的方法。特别是,我们将矢量数据的量化器设计问题分解为独立的标量设计子问题。然后,我们演示了用于为每个标量维度计算最佳步长和比特分配的分析技术,以最大程度地减少解码器的期望均方误差(MSE)。仿真结果验证了本文的分析结果。

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