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Speaker Identification Using Data-Driven Score Classification

机译:使用数据驱动的分数分类识别说话人

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摘要

We present a comparative evaluation of different classification algorithms for a fusion engine that is used in a speaker identity selection task. The fusion engine combines the scores from a number of classifiers, which uses the GMM-UBM approach to match speaker identity. The performances of the evaluated classification algorithms were examined in both the text-dependent and text-independent operation modes. The experimental results indicated a significant improvement in terms of speaker identification accuracy, which was approximately 7% and 14.5% for the text-dependent and the text-independent scenarios, respectively. We suggest the use of fusion with a discriminative algorithm such as a Support Vector Machine in a real-world speaker identification application where the text-independent scenario predominates based on the findings.
机译:我们提出了针对说话人身份选择任务中使用的融合引擎的不同分类算法的比较评估。融合引擎结合了来自多个分类器的分数,这些分类器使用GMM-UBM方法来匹配说话者身份。在与文本相关和与文本无关的操作模式下,都检查了评估的分类算法的性能。实验结果表明,在说话人识别准确度方面有了显着提高,分别在与文本有关的情况和与文本无关的情况下分别约为7%和14.5%。我们建议在现实世界中的说话人识别应用程序中使用区分算法(例如支持向量机)与融合算法的融合,其中基于文本的发现,文本无关的场景占主导地位。

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