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Enhancing the Robustness of the Posterior-Based Confidence Measures Using Entropy Information for Speech Recognition

机译:使用熵信息进行语音识别增强基于后验的置信度的鲁棒性

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In this paper, the robustness of the posterior-based confidence measures is improved by utilizing entropy information, which is calculated for speech-unit-level posteriors using only the best recognition result, without requiring a larger computational load than conventional methods. Using different normalization methods, two posterior-based entropy confidence measures are proposed. Practical details are discussed for two typical levels of hidden Markov model (HMM)-based posterior confidence measures, and both levels are compared in terms of their performances. Experiments show that the entropy information results in significant improvements in the posterior-based confidence measures. The absolute improvements of the out-of-vocabulary (OOV) rejection rate are more than 20% for both the phoneme-level confidence measures and the state-level confidence measures for our embedded test sets, without a significant decline of the in-vocabulary accuracy.
机译:在本文中,通过利用熵信息提高了基于后验的置信度的鲁棒性,该信息仅使用最佳识别结果为语音单元级后代计算,而不需要比传统方法大的计算量。使用不同的归一化方法,提出了两种基于后验的熵置信度度量。讨论了基于隐马尔可夫模型(HMM)的后验置信度度量的两个典型级别的实用细节,并对这两个级别的性能进行了比较。实验表明,熵信息显着改善了基于后验的置信度。对于我们的嵌入式测试集,音素级置信度和状态级置信度的绝对语音输出(OOV)拒绝率的绝对提高超过20%,而语音中的语音输出没有明显下降准确性。

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