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首页> 外文期刊>IEEE Transactions on Consumer Electronics >Self-improvement of voice interface with user-input spoken query at early stage of commercialization
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Self-improvement of voice interface with user-input spoken query at early stage of commercialization

机译:在商业化初期通过用户输入的语音查询自我完善语音界面

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摘要

This paper concerns the self-improvement of voice interface by using acoustic model re-training with user-input spoken query at early stage of commercialization, when the conventional confidence measure-based acoustic model re-training is not reliable. This paper analyzes error patterns in user-input spoken queries, categorizes these error patterns, defines a quantitative measurement for each category of error patterns and proposes a filter-based approach over this quantitative measurement. The proposed filter-based method includes four distinctive filters: filter over environmental noise level, filter over non-pitch ratio within utterance, filter over average phoneme duration function score and filter over clipped frame composition ratio. For the evaluation, the initial performance of the acoustic model was measured at 66.1% in terms of speech recognition rate. The overall performance is demonstrated as 73.8% when all of the proposed filters are applied for the re-training of the acoustic model. This result demonstrates 3.1% better recognition rate than a confidence measure-based acoustic model re-training method. Our proposed method is applicable to other data-driven classification services of consumer electronic products in other mediums (e.g. image) at their early stage of commercialization.
机译:在传统的基于置信度度量的声学模型重新训练不可靠的情况下,本文涉及在商业化早期通过使用声学模型重新训练与用户输入的口头查询进行语音界面的自我改进。本文分析了用户输入的口头查询中的错误模式,对这些错误模式进行了分类,为每种错误模式类别定义了一种量化度量,并提出了基于过滤器的方法来进行这种量化度量。所提出的基于滤波器的方法包括四个独特的滤波器:环境噪声等级之上的滤波器,话语内非音调比例之上的滤波器,平均音素持续时间函数得分之上的滤波器以及削波帧组成比率之上的滤波器。为了进行评估,就语音识别率而言,声学模型的初始性能测得为66.1%。当所有建议的滤波器都用于声学模型的重新训练时,总体性能为73.8%。该结果证明,与基于置信度的声学模型再训练方法相比,识别率高3.1%。我们提出的方法可应用于其他媒介在商品化初期的其他数据驱动的消费电子产品在其他媒介(例如图片)中的分类服务。

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