首页> 外文会议>Annual conference of the International Speech Communication Association;INTERSPEECH 2010 >Improved Spoken Term Detection by Discriminative Training of Acoustic Models based on User Relevance Feedback
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Improved Spoken Term Detection by Discriminative Training of Acoustic Models based on User Relevance Feedback

机译:通过基于用户相关性反馈的声学模型的判别训练来改进语音术语检测

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In a previous paper [1], we proposed a new framework for spo ken term detection by exploiting user relevance feedback in formation to estimate better acoustic model parameters to be used in rescoring the spoken segments. In this way, the acoustic models can be trained with a criterion of better retrieval perfor mance, and the retrieval performance can be less dependent on the existence of a set of acoustic models well matched to the corpora to be retrieved. In this paper, a new set of objective functions for acoustic model training in the above framework was proposed considering the nature of retrieval process and its performance measure, and discriminative training algorithms maximizing the objective functions were developed. Significant performance improvements were obtained in preliminary exper iments.
机译:在先前的论文[1]中,我们提出了一种通过利用用户在形式上的相关性反馈来估计语音词条检测中更好的声学模型参数的语音术语检测新框架。这样,可以以更好的检索性能为准则来训练声学模型,并且检索性能可以更少地依赖于与要检索的语料库非常匹配的一组声学模型的存在。考虑到检索过程的性质及其性能指标,本文在上述框架下提出了一套新的声学模型训练目标函数,并开发了最大化目标函数的判别训练算法。在初步实验中获得了显着的性能改进。

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