TASK ADAPTATION IN SYLLABLE TRIGRAM MODELS FOR CONTINUOUS SPEECH RECOGNITION

被引:0
作者
MATSUNAGA, S
YAMADA, T
SHIKANO, K
机构
关键词
SPEECH RECOGNITION; STOCHASTIC LANGUAGE MODEL;
D O I
暂无
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
In speech recognition systems dealing with unlimited vocabulary and based on stochastic language models, when the target recognition task is changed, recognition performance decreases because the language model is no longer appropriate. This paper describes two approaches for adapting a specific/general syllable trigram model to a new task. One uses a small amount of text data similar to the target task, and the other uses supervised learning using the most recent input phrases and similar text. In this paper, these adaptation methods are called ''preliminary learning'' and ''successive learning'', respectively. These adaptation are evaluated using syllable perplexity and phrase recognition rates. The perplexity was reduced from 24.5 to 14.3 for the adaptation using 1000 phrases of similar text by preliminary learning, and was reduced to 12.1 using 1000 phrases including the 100 most recent phrases by successive learning. The recognition rates were also improved from 42.3% to 51.3% and 52.9%, respectively. Text similarity for the approaches is also studied in this paper.
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页码:38 / 43
页数:6
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