Fuzzy partition models and their effect in continuous speech recognition

Y. Kato, M. Sugiyama
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引用次数: 2

Abstract

Fuzzy partition models (FPMs) with multiple input-output units were applied to continuous speech recognition, and the use of automatic incremental training was evaluated. After initial training using word data, phrase recognition rates of 72.7% and 66.9% were obtained for an FPM and a TDNN (time-delay neural network), respectively. After incremental training, the phrase recognition rates improved to 86.3% and 78.4%, respectively. The FPMs provided more accurate segmentation after incremental training. The experiments determined that better phoneme segmentation provides greater improvement in phrase recognition. Incremental training also significantly improves recognition performance. As FPMs can be trained rapidly, various applications using large-scale training data are also possible.<>
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模糊划分模型及其在连续语音识别中的应用
将多输入输出单元模糊划分模型(FPMs)应用于连续语音识别,并对自动增量训练的效果进行了评价。使用单词数据进行初始训练后,FPM和TDNN(时滞神经网络)的短语识别率分别为72.7%和66.9%。经过增量训练,短语识别率分别提高到86.3%和78.4%。经过增量训练后,FPMs提供了更准确的分割。实验表明,更好的音素分割对短语识别有更大的改善。增量训练也能显著提高识别性能。由于fpm可以快速训练,因此使用大规模训练数据的各种应用也成为可能。
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