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EXPLOITING NON-TARGET REGION INFORMATION FOR CONFIDENCE MEASURE BASED ON BAYESIAN INFORMATION CRITERION

机译:基于贝叶斯信息标准的置信度量利用非目标区域信息

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In this paper appropriate confidence measures (CMs) are investigated for Mandarin command word recognition, both in the so-called target region and non-target region, respectively. Here the target region refers to the recognized speech part of command word while the non-target region refers to the recognized silence part. It shows that exploiting extra information in the non-target region can effectively complement the traditional CM which usually focus on the target region. Furthermore, when analyzing the non-target region in a more theoretical way, where Bayesian information criterion (BIC) is employed to locate more precise boundary in the non-target region, even more improvement is achieved. In two different Mandarin telephone command word tasks, more than 20% relative reduction of equal error rate (EER) is obtained.
机译:在本文中,在所谓的目标区域和非目标区域中,研究了适当的置信度措施(CMS),用于分别在所谓的目标区域和非目标区域中进行普通话命令字识别。这里,目标区域是指命令字的识别语音部分,而非目标区域是指识别的沉默部分。它表明,在非目标区域中利用额外信息可以有效地补充通常聚焦在目标区域的传统CM。此外,当以更为理论的方式分析非目标区域,其中采用贝叶斯信息标准(BIC)来定位在非目标区域中的更精确的边界,实现更多改进。在两个不同的普通话电话命令字任务中,获得了20%以上的相对差错率(eer)的相对减少。

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