广义自回归预测及其在语音编码中的应用

Zhicheng Wang
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引用次数: 0

摘要

线性预测是信号处理的一项重要技术,已应用于许多领域。虽然非线性预测已经用一些技术进行了研究,如多层反向传播神经网络,但计算和存储费用通常非常高。此外,它们缺乏非线性分析,导致只能通过实验选择参数和尺寸来改进。本文提出了基于非线性统计分析的自回归预测体系结构和基于最陡下降方案和相关最大化的自回归预测设计算法。预测模型不是固定的配置,而是从一个线性模型开始,然后逐步学习和发展到一个更复杂的结构,为某个目标创建一个最小的结构。它的自适应学习速度比现有算法快得多。模型决定自己的大小和拓扑结构,并保持最小的结构。提出的方案被称为广义反回归预测。该方法也可用于一般的ARMA非线性预测。利用广义AR模型的非线性和并行性,提出了一种新的基于广义AR预测的语音编码系统。该系统优于相应的线性编码器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generalized autoregressive prediction with application to speech coding
Linear prediction is a major technique of signal processing and has been applied to many areas. Although nonlinear prediction has been investigated with some techniques such as multilayer backpropagation neural networks, the computational and storage expenses are usually very high. Moreover, they are deficient in nonlinear analysis, leading to no way to improvement but experimentally choosing parameters and sizes in ad hoc fashion. In this paper, the author presents new architectures for autoregressive prediction based upon statistical analysis of nonlinearity and design algorithm based on steepest descent scheme and correlation maximization. Instead of a fixed configuration, a prediction model begins with a linear model, then learns and grows to a more sophisticated structure step by step, creating a minimal structure for a certain objective. It adaptively learns much faster than existing algorithms. The model determines its own size and topology and retains a minimal structure. The proposed scheme is called generalized antoregressive prediction. This technique can be also applied to general ARMA nonlinear prediction. A new speech coding system using the generalised AR prediction is presented, which takes advantages of nonlinearity and parallelism of the proposed AR model. The system outperforms the corresponding linear coders.<>
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