理解法庭说话人识别的分数

W. Campbell, K. Brady, J. Campbell, R. Granville, D. Reynolds
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引用次数: 31

摘要

最近在法庭说话人识别方面的工作引入了许多新的评分方法。首先,置信度分数(后验概率)已经成为向分析师展示结果的有用方法。引入客观度量置信度分数质量的归一化交叉熵,使评估和设计这些系统的方法更加系统化。第二种流行的评分方法是用于高级特征的支持向量机(svm)。支持向量机是准确的,并且在各种各样的标记类型(单词、电话和韵律特征)上产生出色的结果。在这两种情况下,分析人员可能无法解释这些方法产生的分数的重要性和意义。我们通过探索统计和模式分类文献中的概念来解决解释问题。在这两种情况下,我们的初步结果都显示了分数有趣的方面,如果把它们“仅仅看作数字”,这些方面并不明显。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding Scores in Forensic Speaker Recognition
Recent work in forensic speaker recognition has introduced many new scoring methodologies. First, confidence scores (posterior probabilities) have become a useful method of presenting results to an analyst. The introduction of an objective measure of confidence score quality, the normalized cross entropy, has resulted in a systematic manner of evaluating and designing these systems. A second scoring methodology that has become popular is support vector machines (SVMs) for high-level features. SVMs are accurate and produce excellent results across a wide variety of token types-words, phones, and prosodic features. In both cases, an analyst may be at a loss to explain the significance and meaning of the score produced by these methods. We tackle the problem of interpretation by exploring concepts from the statistical and pattern classification literature. In both cases, our preliminary results show interesting aspects of scores not obvious from viewing them "only as numbers"
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