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首页> 外文期刊>Indian Journal of Science and Technology >Classification of Sex based Speech Differentiation in Healthy Human Beings based on Voiced and Unvoiced Components
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Classification of Sex based Speech Differentiation in Healthy Human Beings based on Voiced and Unvoiced Components

机译:基于有声和无声成分的健康人基于性别的语音区分分类

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Background/Objective: The objective of the present study is to classify a given speech signal by using energy as a differentiating parameter into voiced and unvoiced components due to the fact that the voiced components have a higher energy than their unvoiced counterparts. Method/Statistical Analysis: This is accomplished by dividing the speech signal into frames and by computing the short time energy of each frame. The recorded speech signal is segmented and then the energy component of these frames are obtained and then classified into voiced and unvoiced components. The current protocol involves 44 subjects, both males and females of no known vocal pathology. Predefined set of words, both in Kannada and English were recorded in a noise proof environment which was then separated into voiced and unvoiced components using MATLAB tool. Findings: The results proved a successful discrimination of the speech signal into voiced and unvoiced components based on the statistical parameters calculated for voiced as well as unvoiced components thereby providing a definite cue towards an automated approach to differentiate the speech into voiced and unvoiced components using statistical parameters. Application/Improvements: Such an approach can further be useful in various speech processing as well as speech recognition applications.
机译:背景/目的:本研究的目的是通过使用能量作为区分参数,将给定的语音信号分类为有声和无声分量,这是因为有声分量比无声分量具有更高的能量。方法/统计分析:这是通过将语音信号分成多个帧并计算每个帧的短时能量来完成的。对记录的语音信号进行分段,然后获得这些帧的能量分量,然后将其分类为有声分量和无声分量。目前的方案涉及44位受试者,男性和女性均未发现声带病理。在防噪声环境中记录了预定义的卡纳达语和英语单词集,然后使用MATLAB工具将其分为有声和无声成分。研究结果:结果证明,基于针对有声和无声成分计算的统计参数,语音信号可以成功区分为有声和无声成分,从而为使用统计方法将语音区分为有声和无声成分提供了明确的线索参数。应用程序/改进:这种方法在各种语音处理以及语音识别应用程序中可能进一步有用。

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