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Evaluating automatic speech recognition systems in comparison with human perception results using distinctive feature measures

机译:使用独特的特征量度,将自动语音识别系统与人类感知结果进行比较

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This paper describes methods for evaluating automatic speech recognition (ASR) systems in comparison with human perception results, using measures derived from linguistic distinctive features. Error patterns in terms of manner, place and voicing are presented, along with an examination of confusion matrices via a distinctive-feature-distance metric. These evaluation methods contrast with conventional performance criteria that focus on the phone or word level, and are intended to provide a more detailed profile of ASR system performance, as well as a means for direct comparison with human perception results at the sub-phonemic level.
机译:本文介绍了使用语言独特特征得出的量度与人类感知结果进行比较的评估自动语音识别(ASR)系统的方法。呈现了有关方式,位置和发声的错误模式,并通过独特的特征距离度量对混淆矩阵进行了检查。这些评估方法与侧重于电话或单词级别的常规性能标准形成对比,旨在提供ASR系统性能的更详细资料,以及在子语音级别上与人类感知结果进行直接比较的手段。

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