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Comparative Analysis of Gender Identification using Speech Analysis and Higher Order Statistics

机译:使用语音分析和高阶统计进行性别识别的比较分析

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Gender identification via speech processing is one of the hot research topics among the security research community. Many cyber systems are being developed to recognize human speech type. These systems mainly comprise of a feature segment process which extracts and selects the features of human speeches. Feature extraction and feature selection are the most noteworthy phase of speech recognition involving numerous strategies. The purpose of this paper is to investigate the potential effectiveness of spectral analysis and higher-order statistics performed over the speech segments of different genders. Spectral analysis is done via spectral descriptors consisting of varied parameters which are widely used in machine learning applications. The varied gender speeches are distinguished by means of parameters, i.e., higher order statistics, like spectral centroid, spectral entropy, spectral kurtosis, spectral slope and spectral flatness. The results obtained show successful discrimination of male and female speeches based on the peakiness of speech, voiced and unvoiced and higher and lower formants.
机译:通过语音处理进行性别识别是安全研究界的热门研究主题之一。正在开发许多网络系统来识别人类的语音类型。这些系统主要由特征段处理组成,该过程提取并选择人类语音的特征。特征提取和特征选择是涉及多种策略的语音识别最值得注意的阶段。本文的目的是研究在不同性别的语音片段上进行频谱分析和高阶统计量的潜在有效性。光谱分析是通过光谱描述符完成的,该描述符由各种参数组成,这些参数广泛用于机器学习应用中。性别语音的变化是通过参数来区分的,即参数的高阶统计,例如频谱质心,频谱熵,频谱峰度,频谱斜率和频谱平坦度。获得的结果表明,基于语音的峰值,浊音和清音以及较高和较低的共振峰,可以成功地区分男性和女性言语。

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