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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Towards better making a decision in speaker verification
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Towards better making a decision in speaker verification

机译:更好地做出说话者验证的决定

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摘要

Speaker verification is a process that accepts or rejects the identity claim of a speaker. How to make a decision is a critical problem; a threshold for decision-making critically determines performance of a speaker verification system. Traditional threshold estimation methods take only information conveyed by training data into consideration and, to a great extent, do not relate it to production data. It turns Out that a speaker verification system with such threshold estimation suffers from poor performance in reality due to mismatches. In this paper. we propose several methods towards better decision-making in a practical speaker verification system. Our methods include the use of additional reliable statistical information for threshold estimation, elimination of abnormal data for better estimation of underlying statistics, and on-line incremental threshold update. To evaluate the performance of our methods. we have done simulations based on a baseline system, Gaussian Mixture Model, in both text-dependent and text-independent modes. Comparative results show that in contrast to the recent threshold estimation methods our methods yield considerably better performance. especially on miscellaneous mismatch conditions, in terms of generalization. Thus our methods provide a promising way for real speaker verification applications. (C) 2002 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 34]
机译:说话者验证是一个接受或拒绝说话者身份声明的过程。如何做出决定是一个关键问题。决策阈值决定了说话者验证系统的性能。传统的阈值估计方法仅考虑培训数据传达的信息,并且在很大程度上不将其与生产数据相关联。事实证明,具有这种阈值估计的说话者验证系统实际上由于失配而遭受不良性能的困扰。在本文中。我们提出了几种方法,可以在实际的说话人验证系统中更好地制定决策。我们的方法包括使用其他可靠的统计信息进行阈值估计,消除异常数据以更好地估计基础统计信息以及在线增量阈值更新。评估我们方法的性能。我们已经基于基线系统(高斯混合模型)以依赖于文本和依赖于文本的模式进行了仿真。比较结果表明,与最近的阈值估计方法相比,我们的方法产生了更好的性能。概括地说,尤其是在其他不匹配条件下。因此,我们的方法为真实的说话人验证应用提供了一种有前途的方法。 (C)2002模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:34]

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