基于非线性变换的快速高效语音信号分类

R. Dogaru
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引用次数: 15

摘要

本文介绍了受一类细胞非线性网络(cnn)的反应扩散机制启发的RD变换(RDT)。这样的cnn可以有效地用于实现变换,但这里我们将介绍RDT作为通用算法。虽然RDT的计算复杂度比传统方法(如DCT、Mel Cepstral等)低几个数量级,但它被证明非常适合于信号分类、识别和检测。针对多类别和用户情况下的语音识别问题提供了几个示例,其性能与传统方法相似,但大大降低了实现成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast and Efficient Speech Signal Classification with a Novel Nonlinear Transform
This paper introduces the RD transform (RDT), inspired from reaction-diffusion mechanisms in a class of cellular nonlinear networks (CNNs). Such CNNs can be efficiently used to implement the transform but here we will introduce RDT as a general purpose algorithm. While having a computational complexity with several orders of magnitude less than traditional (e.g. DCT, Mel Cepstral, etc.) methods, RDT it is shown to be well suited for signal classification, recognition and detection. Several examples are provided for the problem of speech recognition in the case of multiple-class and users showing performance similar to that obtained with traditional methods but with an important reduction of the implementation costs.
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