Efficient decoding strategies for conversational speech recognition using a constrained nonlinear state-space model

Jeff Z. Ma, L. Deng
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引用次数: 27

Abstract

In this paper, we present two efficient strategies for likelihood computation and decoding in a continuous speech recognizer using an underlying nonlinear state-space dynamic model for the hidden speech dynamics. The state-space model has been specially constructed so as to be suitable for the conversational or casual style of speech where phonetic reduction abounds. Two specific decoding algorithms, based on optimal state-sequence estimation for the nonlinear state-space model, are derived, implemented, and evaluated. They successfully overcome the exponential growth in the original search paths by using the path-merging approaches derived from Bayes' rule. We have tested and compared the two algorithms using the speech data from the Switchboard corpus, confirming their effectiveness. Conversational speech recognition experiments using the Switchboard corpus further demonstrated that the use of the new decoding strategies is capable of reducing the recognizer's word error rate compared with two baseline recognizers, including the HMM system and the nonlinear state-space model using the HMM-produced phonetic boundaries, under identical test conditions.
基于约束非线性状态空间模型的会话语音识别的高效解码策略
在本文中,我们提出了在连续语音识别器中使用潜在的非线性状态空间动态模型进行似然计算和解码的两种有效策略。状态空间模型是专门构建的,适用于语音缩减较多的会话式或随意式语音。基于非线性状态空间模型的最优状态序列估计,推导、实现和评估了两种特定的解码算法。他们利用贝叶斯规则衍生的路径合并方法,成功地克服了原始搜索路径的指数增长。我们使用总机语料库中的语音数据对两种算法进行了测试和比较,证实了它们的有效性。使用交换机语料库的会话语音识别实验进一步证明,在相同的测试条件下,与HMM系统和使用HMM产生的语音边界的非线性状态空间模型两种基线识别器相比,使用新的解码策略能够降低识别器的单词错误率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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