A study on rescoring using HMM-based detectors for continuous speech recognition

Qiang Fu, B. Juang
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引用次数: 5

Abstract

This paper presents an investigation of the rescoring performance using hidden Markov model (HMM) based attribute detectors. The minimum verification error (MVE) criterion is employed to enhance the reliability of the detectors in continuous speech recognition. The HMM-based detectors are applied on the possible recognition candidates, which are generated from the conventional decoder and organized in phone/word graphs. We focus on the study of rescoring performance with the detectors trained on the tokens produced by the decoder but labeled in broad phonetic categories rather than the phonetic identities. Various training criteria and knowledge fusion methods are investigated under various semantic level rescoring scenarios. This research demonstrates various possibilities of embedding auxiliary information into the current automatic speech recognition (ASR) framework for improved results. It also represents an intermediate step towards the construction of a true detection-based ASR paradigm.
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基于hmm检测器的连续语音识别评分研究
本文研究了基于隐马尔可夫模型(HMM)的属性检测器的评分性能。在连续语音识别中,采用最小验证误差(MVE)准则来提高检测器的可靠性。基于hmm的检测器应用于可能的识别候选者,这些候选者由传统解码器生成并组织在电话/单词图中。我们重点研究了检测器对解码器产生的标记进行训练,但标记在广泛的语音类别而不是语音身份上的评分性能。在不同的语义级评分场景下,研究了不同的训练准则和知识融合方法。本研究展示了在当前自动语音识别(ASR)框架中嵌入辅助信息以改善结果的各种可能性。它还代表了构建真正基于检测的ASR范式的中间步骤。
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