用于人-人自发语音识别的人类和非人类噪声的声学和语言建模

Tanja Schultz, I. Rogina
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引用次数: 28

摘要

介绍了我们的语音到语音翻译系统JANUS在人类自发对话中的几个改进。描述了自发言语中的常见现象,然后对不同类型的噪声进行了分类。为了处理人与人之间对话中的各种自发效应,引入了代表人类和非人类噪声以及单词片段的特殊噪声模型。结果表明,噪声的声学建模和语言建模都能显著提高识别性能。在实验中,执行噪声类的聚类,并比较产生的聚类变量,从而允许人们确定模型的灵敏度和可训练性之间的最佳权衡。
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Acoustic and language modeling of human and nonhuman noises for human-to-human spontaneous speech recognition
Several improvements of our speech-to-speech translation system JANUS on spontaneous human-to-human dialogs are presented. Common phenomena in spontaneous speech are described, followed by a classification of different types of noise. To handle the variety of spontaneous effects in human-to-human dialogs, special noise models are introduced representing both human and nonhuman noise, as well as word fragments. It is shown that both the acoustic and the language modeling of the noise increase the recognition performance significantly. In the experiments, a clustering of the noise classes is performed and the resulting cluster variants are compared, thus allowing one to determine the best tradeoff between the sensitivity and trainability of the models.
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