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VQ based comparative analysis of MFCC and BFCC speaker recognition system

机译:基于VQ的MFCC和BFCC扬声器识别系统的比较分析

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The language is considered the important mode of communication in this world and key mechanism manipulated for the language is speech. The parametric form of signal is used by speech recognizers to get the key characteristics of speech signal for the purpose of recognition. Development in the digital signal based speech processing technology open the door of the design of highly potential based speaker recognition system. A speaker-recognition scheme is more flexibly capable to function starved of both, the support of clear user and independency of the oral noise. In this paper, the performance of Mel Frequency Cepstral Coefficient (MFCC) and Bark frequency Cepstral coefficient (BFCC) were analyzed their effects in a text dependent speaker recognition system using VQ vector quantization method. It is found that the MFCC is offer better recognition rate as contrasted to BFCC using VQ vector quantization as speaker modeling technique.
机译:该语言被认为是这个世界上的重要沟通方式,并且为语言操纵的关键机制是语音。语音识别器使用的参数形式,以获得语音信号的关键特性以识别目的。基于数字信号的语音处理技术的开发开门高潜能的扬声器识别系统的设计。扬声器识别方案更灵活地能够履行缺乏的功能,对清晰的用户和口腔噪声的独立性的支持。在本文中,分析了使用VQ矢量量化方法的文本依赖扬声器识别系统中的效果分析了MEL频率谱系数(MFCC)和BARK频率谱系统(BFCC)的性能。发现MFCC与使用VQ向量量化作为扬声器建模技术相比,与BFCC相比,提供更好的识别率。

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