首页> 外文会议>e-Education, e-Business, e-Management, and e-Learning, 2010. IC4E '10 >Combining Phoneme Loop Posteriori with Decoding Posteriori as Confidence Measure for Speech Recognition in E-service
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Combining Phoneme Loop Posteriori with Decoding Posteriori as Confidence Measure for Speech Recognition in E-service

机译:将音素循环后验与解码后验相结合作为电子服务语音识别的置信度

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This paper presents our confidence measure system for speech recognition to integrate with e-Service to make Human-Computer Interaction more convenient. In order to make the system more robust for practical usage, the confidence measure is optimized to improve its performance as well as speed, compared with traditional state based confidence measure. First, the decoding likelihood of the best path is normalized with all the survival paths to form the onepass-based posteriori. After decoding, when recognition result is available as well as the phoneme level division point, the phoneme loop posteriori based confidence is calculated. Different models are compared for speed and performance. Then they are combined to form the final confidence for the judgement. Experiments are designed, and the proposed confidence measure get a relative improvement of 20%, 19.33% for equal error rate and 37.19%, 35.17% of false acceptance rate for out-of-vocabulary set on the development sets and the test sets, with no loss of false rejection rate for in-vocabulary set.
机译:本文介绍了我们的语音识别置信度测量系统,该系统与e-Service集成在一起,使人机交互更加便捷。为了使系统在实际使用中更加健壮,与传统的基于状态的置信度相比,对置信度进行了优化以提高其性能和速度。首先,将最佳路径的解码可能性与所有生存路径进行归一化,以形成基于单通的后验。解码后,当可获得识别结果以及音素级别划分点时,将计算基于音素循环后验的置信度。比较了不同型号的速度和性能。然后将它们组合起来,形成最终的判断置信度。设计了实验,提出的置信度度量在开发集和测试集上相对于误用率的相对误差率分别提高了20%,19.33%和37.19%,35.17%,分别为37.19%和35.17%。词汇集的错误拒绝率没有损失。

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