神经网络语音识别的频谱表示-教程

B.H. Juang, L. Rabiner
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引用次数: 9

摘要

讨论了基于频谱的语音表示。频谱表示,为了对语音识别有用,需要从计算(分析)和感知的角度来证明。因此,作者对谱表示的讨论包括计算模型和适用于神经网络的相关相似性度量。本教程旨在为语音识别应用提供通用神经网络分类器和经典语音分析之间的桥梁。所讨论的各种光谱表示与适当的光谱失真措施密切相关,这些措施可以在相关的表示领域中进行评估。作者指出了如何将这些表征和频谱失真措施应用于模式识别问题的神经网络解决方案
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral representations for speech recognition by neural networks-a tutorial
Spectrum-based speech representations are discussed. Spectral representations, in order to be useful for speech recognition, need to be justified from both the computational (analytical) and the perceptual viewpoints. The authors' discussion of spectral representations, therefore, includes both the computational model and the associated measures of similarity that are appropriate for neural networks. This tutorial is intended to serve as a bridge between generic neural network classifiers and classical speech analysis for speech recognition applications. The various spectral representations discussed are intimately linked with appropriate spectral distortion measures that can be evaluated in the relevant domain of representation. The authors point out how these representations and spectral distortion measures can be applied in neural network solutions to pattern recognition problems.<>
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