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I-vector based utterance verification for large-vocabulary speech recognition system

机译:大型语音识别系统基于I矢量的话语验证

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This paper proposes a new Utterance Verification (UV) algorithm based on i-vector. Phone segments are extracted and concatenated from the training data, which are used to train the Universal Background Model (UBM) and the Total Variability (TV) matrix, and then, i-vector is extracted from the enrollment and evaluation data using UBM and TV matrix. We compare two Confidence Measures (CMs), cosine distance scoring and Support Vector Machine (SVM). To compensate the channel effect, we use two channel compensation methods, Linear Discriminant Analysis (LDA) and Within-Class Covariance Normalization (WCCN). The decision is made by the word-level CM by combining the phone-level CMs. Experiments are conducted in the Korean isolated word recognition domain. Experimental results show that SVM is superior to cosine distance scoring. Best performance is achieved when SVM is used without any channel compensation method.
机译:本文提出了一种新的基于i-vector的话语验证(UV)算法。从训练数据中提取并细分电话片段,用于训练通用背景模型(UBM)和总可变性(TV)矩阵,然后使用UBM和TV从注册和评估数据中提取i-vector矩阵。我们比较了两个置信度(CM),余弦距离评分和支持向量机(SVM)。为了补偿通道效应,我们使用两种通道补偿方法:线性判别分析(LDA)和类内协方差归一化(WCCN)。单词级CM通过组合电话级CM来做出决定。实验是在朝鲜语单字识别领域中进行的。实验结果表明,SVM优于余弦距离评分。在不使用任何通道补偿方法的情况下使用SVM可获得最佳性能。

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