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Improved Signal/Pause Segmentation Algorithm Based on the Probability Density Function of Background Noise and Empirical Mode Decomposition

机译:基于背景噪声和经验模式分解的概率密度函数的改进信号/暂停分段算法

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Segmentation into informative regions is an important stage in pre-processing of speech. The quality of segmentation affects the performance of almost all known applications of speech technologies (speech recognition, speaker identification, speech-to-text conversion, etc.). The article presents an improved speech/pause segmentation algorithm. The original algorithm is based on the use of probability density function of background noise, and the analysis of one-dimensional Mahalanobis distance of discrete timing for the investigated speech signal. Modernization consists in the fragmentation of speech and the decomposition of fragments into empirical modes for subsequent analysis of one-dimensional Mahalanobis distance of discrete timing for each mode separately. A study of the modernized algorithm has been carried out in comparison with the original algorithm and the well-known segmentation methods based on the analysis of zero-crossing rate and short-time energy. In accordance with the obtained results of the study, it was concluded that the improved segmentation algorithm provides the best detection of the boundaries of the beginning and the end of informative speech sections with the first and second kind errors, being 4.5767 % and 1.421 %, respectively.
机译:进入信息地区的细分是言语预处理的重要阶段。分割质量会影响几乎所有已知语音技术应用的性能(语音识别,扬声器识别,语音到文本转换等)。该文章提出了一种改进的语音/暂停分段算法。原始算法基于背景噪声的概率密度函数的使用,以及分析研究语音信号的离散定时的一维mahalanobis距离。现代化在于言语的碎片和分解成经验模式,用于随后分析每个模式的离散时序的一维mahalanobis距离。与原始算法和众所周知的分割方法相比,已经进行了对现代化算法的研究,基于零交叉速率和短时能量的分析。根据该研究的结果,得出结论,改进的分割算法提供了具有第一和第二种误差的信息言论的开始和结束的最佳检测,为4.5767%和1.421%,分别。

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