说话人识别分数的归一化补偿信噪比和持续时间

J. Harmse, S. Beck, H. Nakasone
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引用次数: 1

摘要

自动说话人验证测试的决策准则是基于漏报概率和虚警概率的加权和的最小化。这些概率是从使用记录语音样本的代表性人群对索赔人和冒充者得分的评估中得出的。然而,在法医说话人验证等应用中,语音样本的信号质量和记录条件通常是未知的,并且通常与定义的错误概率的评估条件不匹配。例如,测试样本通常持续时间短,有明显的噪声,并且来自不确定的通道。因此,有必要根据记录的信号条件对说话者测试分数进行归一化或调整检测阈值。我们没有考虑所有的可能性,而是对训练集和测试集的信噪比(SNR)和语音持续时间的几个特定联合组合进行了评估。开发了一个复合回归模型来预测这些条件的任何测量值的必要调整。此外,还讨论了一种方法来解释相对于一组所需的I型和II型错误概率的归一化分数
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speaker Recognition Score-Normalization to Compensate for SNR and Duration
The decision criterion for automatic speaker verification tests is based on minimization of a weighted sum of the miss and false alarm probabilities. These probabilities are derived from an evaluation of claimant and impostor scores using a representative population of recorded speech samples. However, in applications such as forensic speaker verification, the signal quality and the recording conditions of the speech samples are usually unknown and generally not matched to the evaluation conditions for the defined error probabilities. For example, test samples are often of short duration, have significant noise, and are from uncertain channels. It is therefore necessary to normalize the speaker test scores or to adjust detection thresholds in accordance with the recorded signal conditions. Instead of accounting for all possibilities, evaluations were conducted for a few specific joint combinations of signal-to-noise ratio (SNR) and speech duration for both the training and test sets. A composite regression model was developed to predict the necessary adjustments for any measured value of these conditions. In addition, a method is discussed to interpret the normalized scores relative to a set of desired Type I and Type II error probabilities
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