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Robust estimation, interpretation and assessment of likelihood ratios in forensic speaker recognition

机译:可靠地估计,解释和评估法医说话人识别中的似然比

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摘要

In this contribution, the Bayesian framework for interpretation of evidence when applied to forensic speaker recognition is introduced. Different aspects of the use of voice as evidence in the court are addressed, as well as the use by the forensic expert of the likelihood ratio as the right way to express the strength of the evidence. Details on computation procedures of likelihood ratios (LR) are given, along with the assessment tools and methods to validate the performance of these Bayesian forensic systems. However, due to the practical scarcity of suspect data and the mismatched conditions between traces and reference populations common in daily casework, significant errors appear in LR estimation if specific robust techniques are not applied. Original contributions for the robust estimation of likelihood ratios are fully described, including TDLRA (target dependent likelihood ratio alignment), oriented to guarantee the presumption of innocence of suspected but non-perpetrators speakers. These algorithms are assessed with extensive Switchboard experiments but moreover through blind LR-based submissions to both NFI-TNO 2003 Forensic SRE and NIST 2004 SRE, where the strength of the evidence was successfully provided for every questioned speech-suspect recording pair in the respective evaluations.
机译:在此贡献中,引入了贝叶斯框架,该框架适用于法医说话者识别时的证据解释。讨论了在法庭上使用声音作为证据的不同方面,以及法医专家使用似然比作为表达证据强度的正确方法。给出了似然比(LR)计算程序的详细信息,以及用于验证这些贝叶斯法医系统性能的评估工具和方法。但是,由于可疑数据的实际缺乏以及在日常案例工作中常见的痕迹和参考人群之间的条件不匹配,如果不使用特定的鲁棒技术,则在LR估计中会出现重大错误。完整描述了对似然比的可靠估计的原始贡献,包括TDLRA(与目标有关的似然比对齐方式),旨在保证怀疑但非犯罪者的无罪推定。这些算法通过广泛的配电盘实验进行了评估,而且通过向NFI-TNO 2003 Forensic SRE和NIST 2004 SRE进行基于LR的盲提交,在各自的评估中成功为每个有疑问的语音可疑记录对提供了有力的证据。

著录项

  • 来源
    《Computer speech and language》 |2006年第3期|p. 331-355|共25页
  • 作者单位

    ATVS (Speech and Signal Processing Group), Computer Science, Escuela Politecnica Superior, Universidad Autonoma de Madrid, Ctra. Colmenar km. 15 Campus de C., E-28049 Madrid, Spain;

    Signal Processing Institute, Swiss Federal Institute of Technology Lausanne (EPFL), CH-1015, Lausanne, Switzerland;

    ATVS (Speech and Signal Processing Group), Computer Science, Escuela Politecnica Superior, Universidad Autonoma de Madrid, Ctra. Colmenar km. 15 Campus de C., E-28049 Madrid, Spain;

    Agnitio, Centro de Empresas La Arboleda, Ctra. A-3 Km. 7. E-28031 Madrid, Spain;

    ATVS (Speech and Signal Processing Group), Computer Science, Escuela Politecnica Superior, Universidad Autonoma de Madrid, Ctra. Colmenar km. 15 Campus de C., E-28049 Madrid, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 计算技术、计算机技术;
  • 关键词

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