词汇独立语音识别使用粒子

E. Whittaker, J.M. Van Thong, P. Moreno
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引用次数: 12

摘要

提出了一种不依赖于固定词汇表的语音识别方法。在语音识别系统中,粒子作为识别单元,实现了独立于单词词汇的语音解码。一个粒子代表一个连接的电话序列。在粒子语音识别器的单最佳假设中,代表单词的每个粒子串都使用电话混淆矩阵扩展为语音相似的候选单词列表。然后使用单词语言模型对生成的单词图进行重新解码,从而产生最终的单词假设。在DARPA hub497和98评估集上,使用粒子假设的词重图重新解码的初步结果表明,与使用相同复杂性的词重图语音识别器相比,WER高出2.2%至2.9%。该方法在口语文档检索和基于客户端-服务器的语音识别中具有潜在的应用前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vocabulary independent speech recognition using particles
A method is presented for performing speech recognition that is not dependent on a fixed word vocabulary. Particles are used as the recognition units in a speech recognition system which permits word-vocabulary independent speech decoding. A particle represents a concatenated phone sequence. Each string of particles that represents a word in the one-best hypothesis from the particle speech recognizer is expanded into a list of phonetically similar word candidates using a phone confusion matrix. The resulting word graph is then re-decoded using a word language model to produce the final word hypothesis. Preliminary results on the DARPA HUB4 97 and 98 evaluation sets using word bigram redecoding of the particle hypothesis show a WER of between 2.2% and 2.9% higher than using a word bigram speech recognizer of comparable complexity. The method has potential applications in spoken document retrieval for recovering out-of-vocabulary words and also in client-server based speech recognition.
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