Cascaded RLS-LMS Prediction in MPEG-4 Lossless Audio Coding

Haibin Huang, P. Fränti, Dong-Yan Huang, S. Rahardja
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引用次数: 29

Abstract

This paper describes the cascaded recursive least square-least mean square (RLS-LMS) prediction, which is part of the recently published MPEG-4 Audio Lossless Coding international standard. The predictor consists of cascaded stages of simple linear predictors, with the prediction error at the output of one stage passed to the next stage as the input signal. A linear combiner adds up the intermediate estimates at the output of each prediction stage to give a final estimate of the RLS-LMS predictor. In the RLS-LMS predictor, the first prediction stage is a simple first-order predictor with a fixed coefficient value 1. The second prediction stage uses the recursive least square algorithm to adaptively update the predictor coefficients. The subsequent prediction stages use the normalized least mean square algorithm to update the predictor coefficients. The coefficients of the linear combiner are then updated using the sign-sign least mean square algorithm. For stereo audio signals, the RLS-LMS predictor uses both intrachannel prediction and interchannel prediction, which results in a 3% improvement in compression ratio over using only the intrachannel prediction. Through extensive tests, the MPEG-4 Audio Lossless coder using the RLS-LMS predictor has demonstrated a compression ratio that is on par with the best lossless audio coders in the field. In this paper, the structure of the RLS-LMS predictor is described in detail, and the optimal predictor configuration is studied through various experiments.
MPEG-4无损音频编码中的级联RLS-LMS预测
本文介绍了最近发布的MPEG-4音频无损编码国际标准中的级联递归最小二乘最小均方(RLS-LMS)预测。该预测器由简单线性预测器的级联级组成,其中一级输出的预测误差作为输入信号传递到下一级。线性组合器将每个预测阶段输出的中间估计相加,给出RLS-LMS预测器的最终估计。在RLS-LMS预测器中,第一个预测阶段是一个固定系数值1的简单一阶预测器。第二阶段使用递归最小二乘算法自适应更新预测系数。随后的预测阶段使用归一化最小均方算法来更新预测系数。然后使用符号-符号最小均方算法更新线性组合器的系数。对于立体声音频信号,RLS-LMS预测器同时使用通道内预测和通道间预测,与仅使用通道内预测相比,压缩比提高了3%。通过广泛的测试,使用RLS-LMS预测器的MPEG-4音频无损编码器的压缩比与该领域最好的无损音频编码器相当。本文详细描述了RLS-LMS预测器的结构,并通过各种实验研究了最优的预测器配置。
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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