A new gender detection algorithm considering the non-stationarity of speech signal

Mamta Kumari, Nilakshi Talukdar, I. Ali
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引用次数: 12

Abstract

This paper presents a new pitch based gender detection algorithm by analyzing the non stationary behavior of speech signal. To find pitch a peak detection algorithm is developed which find the dominant frequencies of vowel part of speech signal and then select the fundamental frequency from them. The evaluation is done on the 200 voice samples by using POC as the accuracy parameter. Gender identification is an important step in speaker and speech recognition system. A gender dependent system reduces the size and complexity of the system. Detecting the gender from the non linguistic characteristics of the voice is well known as gender detection. To extract the gender information from the speech signal we have used a feature called pitch from voiced part of the speech signal. To extract the mentioned feature ‘pitch’ from the speech signal we develop a peak detection algorithm and used standard Fast Fourier Transform (FFT) technique. Further, this feature is used for the speaker's gender classification.
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一种考虑语音信号非平稳性的性别检测新算法
本文通过分析语音信号的非平稳特性,提出了一种新的基于音高的性别检测算法。为了确定音高,提出了一种峰值检测算法,该算法首先确定语音信号中元音部分的主导频率,然后从中选择基频。以对话率为精度参数,对200个语音样本进行了评价。性别识别是说话人和语音识别系统中的一个重要步骤。性别依赖的系统减少了系统的规模和复杂性。从语音的非语言特征中检测性别被称为性别检测。为了从语音信号中提取性别信息,我们从语音信号的浊音部分使用了一个称为音高的特征。为了从语音信号中提取上述特征“音调”,我们开发了一种峰值检测算法并使用了标准的快速傅里叶变换(FFT)技术。此外,该特征还用于说话人的性别分类。
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