一种基于语音样本的性别检测算法

Mamta Kumari, I. Ali
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引用次数: 5

摘要

声音信号,语音,具有检测说话者性别的特性。这就是众所周知的性别检测(GD)。本文提出了一种基于音高的性别检测算法。基音是语音信号的基频。使用音高的性别检测可以在时域、频域或两者中进行。在本文中,我们提出了一种有效的基于时域的性别检测(GD)算法,其中我们使用自相关(ACF)作为基音检测技术,并使用K-Means作为分类器。在我们的算法中,我们引入了有效的帧选择技术来从语音信号中确定基音。该技术不仅提高了基音检测算法的性能,而且提高了分类器的效率。在基于40个说话人的语音数据库中验证了我们提出的算法,并测量了性别分类的正确率。该算法实现后,性能得到了提高。
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An efficient algorithm for Gender Detection using voice samples
Acoustic signal, speech, having a property for detecting the gender of a speaker. This is well known as Gender Detection (GD). In this paper, we propose pitch based gender detection algorithm. Pitch is the fundamental frequency of speech signal. Gender Detection using pitch can be performed in time domain, frequency domain, or in both. In this current paper, we propose an efficient time domain based gender detection (GD) algorithm, where, we use Autocorrelation (ACF) as pitch detection technique, and K-Means as a classifier. In our algorithm, we introduce efficient frame selection techniques to determine the pitch from speech signal. This technique not only improves the performance of the pitch detection algorithms, but also it improves the classifier efficiency. Our proposed algorithm was verified over a forty speaker based speech database, and the percentage of correctness for the gender classification was measured. The performance was improved after our algorithm was implemented.
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