塔克分解在语音信号特征提取中的应用

Lidong Yang, Jing Wang, Xiang Xie, Jingming Kuang
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引用次数: 2

摘要

语音信号特征提取是语音识别系统的重要组成部分。采用Tucker分解提取语音特征。首先,对预处理后的语音信号进行三阶小波变换,得到不同尺度的信息;其次,从不同尺度提取常规特征参数,创建一个三阶语音张量(帧、尺度、特征参数)。然后,对张量进行Tucker分解,得到不同模式下的投影矩阵。第三,在每种模式下对语音张量和投影矩阵进行矩阵积,并对映射结果进行度量。最后,构建高阶空间特征系统,即得到语音特征矩阵。特征系统可以充分表达语音信号的特征。这些矩阵可以用于模型训练和语音识别。数值实验证明了塔克分解在语音信号特征提取方面优于传统方法的优势,并且对噪声语音具有较强的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Tucker Decomposition in Speech Signal Feature Extraction
Speech signal feature extraction is an important part of speech recognition system. We present Tucker decomposition to extract speech feature. Firstly, the preprocessed speech signal is decomposed via three-level Wavelet transform, and the information in different scales is obtained. Next, the conventional feature parameters are extracted from the different scales, and a 3-order speech tensor (frames, scales, feature parameters) could be created. Then, the tensor is decomposed by Tucker decomposition, and projection matrices in different mode are obtained. Thirdly, matrix product is performed between speech tensor and projection matrices in each mode, and mapped results are metricized. Finally, feature system in high order space is built, in other words, speech feature matrices are obtained. The feature system can fully express speech signal features. These matrices can be used for model training and speech recognition. Numerical experiments support the advantage of Tucker decomposition over conventional methods for speech signal feature extraction, furthermore, it is robust to noisy speech.
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