A fuzzy-GMM classifier for multilingual speaker identification

A. Devika, M. Sumithra, A. Deepika
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引用次数: 3

Abstract

In this paper, a new modeling approach is proposed by hybriding the features of expectation-maximization algorithm(GMM) and fuzzy c-means algorithm(FCM). Based on the analysis over conventional GMM technique, we suggested a new speaker identification system by fusing GMM (optimized using EM algorithm) and FCM, to improve the identification rate further in multilingual speaker identification system. The proposed technique and GMM technique was evaluated in mono and multilingual environments. Experiments were done also by varying the initial code books for generating speaker model. The experimental result shows improvements on a combined FGMM system, which employs fusion for the multilingual context with varying initial code books gives an improvement of minimum 2.98% than existing GMM approach. MFCC technique is used for extracting the features. The algorithms were compared using TIMIT database of 54 speakers speaking 3 languages like English, Hindi and Tamil.
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多语说话人识别的模糊- gmm分类器
本文结合期望最大化算法(GMM)和模糊c均值算法(FCM)的特点,提出了一种新的建模方法。为了进一步提高多语言说话人识别系统的识别率,在分析传统GMM技术的基础上,提出了一种融合GMM (EM算法优化)和FCM的说话人识别系统。在单语言和多语言环境下对该技术和GMM技术进行了评估。实验还通过改变初始码本来生成说话人模型。实验结果表明,采用不同初始码本的多语言上下文融合的组合FGMM系统比现有的GMM方法至少提高了2.98%。采用MFCC技术提取特征。这些算法与TIMIT数据库中54名说英语、印地语和泰米尔语等3种语言的人进行了比较。
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