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A new two-stage scoring normalization approach to speaker verification

机译:一种新的两阶段评分标准化方法,用于说话人验证

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In speaker verification, the cohort and world models have been separately used for scoring normalization. The authors embed the two models in elliptical basis function networks and propose a two-stage decision procedure for improving verification performance. The procedure begins with normalization of an utterance by a world model. If the difference between the resulting score and a world threshold is sufficiently large, the claimant is accepted or rejected immediately. Otherwise, the score will be normalized by a cohort model, and the resulting score will be compared with a cohort threshold to make a final accept/reject decision. Experimental evaluations based on the YOHO corpus suggest that the two-stage method achieves a lower error rate as compared to the case where only one background model is used.
机译:在说话者验证中,同类群组和世界模型已分别用于评分归一化。作者将这两个模型嵌入到椭圆基函数网络中,并提出了两阶段的决策程序来提高验证性能。该过程开始于通过世界模型对话语进行归一化。如果所得分数与世界阈值之间的差异足够大,则索赔人将立即被接受或拒绝。否则,将通过同类群组模型对分数进行归一化,并将所得分数与同类群组阈值进行比较,以做出最终的接受/拒绝决定。基于YOHO语料库的实验评估表明,与仅使用一个背景模型的情况相比,采用两步法可获得较低的错误率。

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