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首页> 外文期刊>IEEE Transactions on Speech and Audio Proceessing >A discriminative training algorithm for VQ-based speakeridentification
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A discriminative training algorithm for VQ-based speakeridentification

机译:基于VQ的说话人识别的区分训练算法

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摘要

A novel method, referred to as group vector quantization (GVQ), is proposed to train VQ codebooks for closed-set speaker identification. In GVQ training, speaker codebooks are optimized for vector groups rather than for individual vectors. An evaluation experiment has been conducted to compare the codebooks trained by the Linde-Buzo-Grey (LBG), the learning vector quantization (LVQ), and the GVQ algorithms. It is shown that the frame scores from the GVQ trained codebooks are less correlated, therefore, the sentence level speaker identification rate increases more quickly with the length of test sentences
机译:提出了一种新的方法,称为组矢量量化(GVQ),用于训练VQ码本以进行封闭设置的说话人识别。在GVQ培训中,针对矢量组而不是单个矢量针对说话者代码簿进行了优化。已经进行了评估实验,以比较由Linde-Buzo-Grey(LBG),学习矢量量化(LVQ)和GVQ算法训练的密码本。结果表明,经过GVQ训练的码本的帧得分相关性较低,因此,句子水平的说话者识别率随着测试句子的长度而更快

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