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Dynamic feature extraction for speech signal based on formant curve and MUSIC

机译:基于共振峰曲线和MUSIC的语音信号动态特征提取

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In order to improve the robustness of speech recognition in noise environmental conditions, this paper proposed a new dynamic feature extraction method based on formant curve and Multiple Signal Classification (MUSIC) spectrum. It uses Hilbert-Huang transform to estimate speech signal formant frequency characteristics, and then gets the first formant curve by combining the first formant frequency characteristics of each frame from the first frame to the last frame, and so forth, gets the second formant curve, the third formant curve and the fourth formant curve. And then calculates the MUSIC spectrum and the energy spectrum for each formant curve, takes logarithm transform and discrete cosine transform. Compared with the method of MFCC, the proposed dynamic feature of speech signal has the time correlation, reveals the close correlation between the speech signal frames, improves the performance of speech recognition.
机译:为了提高噪声环境下语音识别的鲁棒性,提出了一种基于共振峰曲线和多信号分类(MUSIC)谱的动态特征提取方法。它使用希尔伯特-黄(Hilbert-Huang)变换估计语音信号共振峰频率特征,然后通过组合从第一帧到最后一帧的每帧的第一共振峰频率特征来获得第一共振峰曲线,依此类推,获得第二共振峰曲线,第三共振峰曲线和第四共振峰曲线。然后计算每个共振峰曲线的MUSIC谱和能谱,进行对数变换和离散余弦变换。与MFCC方法相比,语音信号的动态特性具有时间相关性,揭示了语音信号帧之间的紧密相关性,提高了语音识别的性能。

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