A novel approach to design a robust and optimal scalar quantizer for any non-standard input density

C. Diab, M. Oueidat
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Abstract

This paper proposes a method for the design of adaptive scalar quantizer based on the source statistics. Adaptivity is useful in applications where the statistics of the source are either not known a priori or will change over time. The proposed method first determines two quantizer cells and the corresponding output levels such that the distortion is minimized over all possible two-level quantizers. Then the cell with the largest empirical distortion is split into two cells in such a way that the empirical distortion is minimized over all possible splits. Each time a split is made, the number of output levels increases by one until the target number of cells is reached. Finally, the resultant quantizer serves as a good initial starting point for running the Lloyd-Max Algorithm in order to reach global optimality. Experimental results show that this new designed quantizer outperforms that obtained by the Lloyd-Max method started with an arbitrary initial point in terms of Mean Square Error (MSE). Moreover, the proposed method converges more rapidly than the Lloyd-Max one. Our method adapts itself to the histogram of the data without creating any empty output range. This feature improves the robustness of the design method.
一种针对任意非标准输入密度设计鲁棒且最优的标量量化器的新方法
提出了一种基于信源统计量的自适应标量量化器设计方法。在源的统计信息要么先验未知,要么随时间变化的应用程序中,适应性非常有用。所提出的方法首先确定两个量化器单元和相应的输出电平,使得失真在所有可能的两级量化器上最小化。然后将经验扭曲最大的单元格分成两个单元格,这样在所有可能的分裂中,经验扭曲最小。每次进行分割时,输出级别的数量增加一个,直到达到目标单元格数量。最后,由此产生的量化器作为运行Lloyd-Max算法的良好初始起点,以达到全局最优性。实验结果表明,该量化器在均方误差(MSE)方面优于任意起始点的Lloyd-Max方法。此外,该方法的收敛速度比Lloyd-Max方法快。我们的方法使自己适应数据的直方图,而不创建任何空的输出范围。该特性提高了设计方法的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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