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Experiments in SVM-based Speaker Verification Using Short Utterances

机译:基于SVM的说话者简短说话者验证实验

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This paper investigates the effects of limited speech data in the context of speaker verification using the Gaussian mixture model (GMM) mean supervector support vector machine (SVM) classifier. This classifier provides state-of-the-art performance when sufficient speech is available, however, its robustness to the effects of limited speech resources has not yet been ascertained. Verification performance is analysed with regards to the duration of impostor utterances used for background, score normalisation and session compensation training cohorts. Results highlight the importance of matching the speech duration of utterances in these cohorts to the expected evaluation conditions. Performance was shown to be particularly sensitive to the utterance duration of examples in the background dataset. It was also found that the nuisance attribute projection (NAP) approach to session compensation often degrades performance when both training and testing data are limited. An analysis of the session and speaker variability in the mean supervector space provides some insight into the cause of this phenomenon.
机译:本文研究了使用高斯混合模型(GMM)平均超向量支持向量机(SVM)分类器在说话人验证中限制语音数据的影响。当有足够的语音可用时,此分类器可提供最新的性能,但是,尚未确定其对有限语音资源影响的鲁棒性。针对用于背景,分数归一化和会话补偿训练队列的冒名顶替者发声的持续时间,分析了验证性能。结果强调了将这些队列中话语的语音持续时间与预期评估条件相匹配的重要性。研究表明,性能对背景数据集中示例的发声时间特别敏感。还发现,当训练和测试数据都受到限制时,用于会话补偿的干扰属性投影(NAP)方法通常会降低性能。通过对平均超向量空间中的会话和说话人变异性的分析,可以深入了解这种现象的原因。

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