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Boosting scores fusion approach using Front-End Diversity and adaboost Algorithm, for speaker verification

机译:使用前端分集和Adaboost算法提高分数融合方法,用于扬声器验证

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摘要

A new speech feature extraction method called Mel Modified Group Delay coefficients (MMGDCs) is presented in this paper. In this method, the modified group delay spectrum detects the high formants frequencies, while the Mel filters select these desired formants in the high frequency regions. Also in this paper, a scores fusion approach is proposed between MMGDCs, Mel coefficients (MFCCs) and their extensions using the asymmetric tappers. The adaboost algorithm is used as strategy of this fusion. The performances evaluation of the proposed features and their extended variants are carried out on NIST 2000 corpus, and tested in both clean and simulated noisy conditions, using different noise categories extracted from the NOISEX-92 database. The obtained results show the superiority of the proposed MMGDCs against MFCCs in terms of error reduction, and the power of adaboost algorithm to make the fusion between MMGDCs and MFCCs better, especially under noisy environments. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文介绍了一种新的语音特征提取方法,称为MEL修改组延迟系数(MMGDC)。在该方法中,修改的组延迟谱检测高制度频率,而MEL滤波器在高频区域中选择这些所需的甲醛。同样在本文中,使用非对称提示符在MMGDC,MEL系数(MFCC)和它们的扩展之间提出了分数融合方法。 Adaboost算法用作这种融合的策略。在NIST 2000语料库上进行了所提出的特征和扩展变体的性能评估,并在清洁和模拟的嘈杂条件下使用不同的噪声类别来测试,并使用来自噪声X-92数据库中提取的不同噪声类别。所获得的结果表明,在误差减少方面,所提出的MMGDC对MFCC的优势,以及Adaboost算法在MMGDC和MFCC之间进行融合的功率,特别是在嘈杂的环境下。 (c)2017 Elsevier Ltd.保留所有权利。

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