寻找提高自动说话人识别因素的可视化分析方法

P. Bruneau, M. Stefas, H. Bredin, Johann Poignant, T. Tamisier, C. Barras
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引用次数: 1

摘要

分类质量标准,如精度、召回率和F-measure通常是评估自动说话人识别贡献的基础。具体来说,比较主要是通过在一组媒体上估计的平均值来进行的。虽然这种方法与评估最先进技术的改进或在自动注释挑战的上下文中对参与者进行排名相关,但它在改进算法、假设公式和证据显示的线索方面给系统设计者提供的见解很少。本文提出了一种可视化和交互式的方法来分析自动标注算法所产生的错误。基于时间轴的工具从本研究的先前步骤中出现。由用户访谈驱动的批判性审查,揭示了警告并改进了用户目标。研究的下一步是通过将当前原型的元素与新确定的相关原则结合起来进行草图设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Visual Analytics Approach to Finding Factors Improving Automatic Speaker Identifications
Classification quality criteria such as precision, recall, and F-measure are generally the basis for evaluating contributions in automatic speaker recognition. Specifically, comparisons are carried out mostly via mean values estimated on a set of media. Whilst this approach is relevant to assess improvement w.r.t. the state-of-the-art, or ranking participants in the context of an automatic annotation challenge, it gives little insight to system designers in terms of cues for improving algorithms, hypothesis formulation, and evidence display. This paper presents a design study of a visual and interactive approach to analyze errors made by automatic annotation algorithms. A timeline-based tool emerged from prior steps of this study. A critical review, driven by user interviews, exposes caveats and refines user objectives. The next step of the study is then initiated by sketching designs combining elements of the current prototype to principles newly identified as relevant.
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