语音输入翻译的有限状态换能器

F. Casacuberta
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引用次数: 33

摘要

隐马尔可夫模型(hmm)和n-图是目前最成功的语音识别系统的基本组成部分。在这样的系统中,hmm(声学模型)被集成到n-gram或随机有限状态语法(语言模型)中。类似的模型可以用于语音翻译,hmm(声学模型)可以集成到有限状态换能器(翻译模型)中。此外,转换过程可以通过在集成网络中搜索状态的最优路径来完成。这个搜索过程的输出是与最优路径相关联的目标单词序列。在语音翻译中,hmm可以从源语料库中训练,翻译模型可以从并行训练语料库中自动学习。这种方法已经在欧盟建立的EUTRANS项目框架内进行了评估。在一个涉及客户与酒店前台接待员(通过电话)交互的应用程序中,进行了大量的语音输入实验,从西班牙语到英语和从意大利语到英语的翻译。本文对最相关的研究结果进行了总结。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finite-state transducers for speech-input translation
Nowadays, hidden Markov models (HMMs) and n-grams are the basic components of the most successful speech recognition systems. In such systems, HMMs (the acoustic models) are integrated into a n-gram or a stochastic finite-state grammar (the language model). Similar models can be used for speech translation, and HMMs (the acoustic models) can be integrated into a finite-state transducer (the translation model). Moreover, the translation process can be performed by searching for an optimal path of states in the integrated network. The output of this search process is a target word sequence associated to the optimal path. In speech translation, HMMs can be trained from a source speech corpus, and the translation model can be learned automatically from a parallel training corpus. This approach has been assessed in the framework of the EUTRANS project, founded by the European Union. Extensive speech-input experiments have been carried out with translations from Spanish to English and from Italian to English translation, in an application involving the interaction (by telephone) of a customer with a receptionist at the front-desk of a hotel. A summary of the most relevant results are presented in this paper.
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