Speech recognition with localized time-frequency pattern detectors

K. Schutte, James R. Glass
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引用次数: 14

Abstract

A method for acoustic modeling of speech is presented which is based on learning and detecting the occurrence of localized time-frequency patterns in a spectrogram. A boosting algorithm is applied to both build classifiers and perform feature selection from a large set of features derived by filtering spectrograms. Initial experiments are performed to discriminate digits in the Aurora database. The system succeeds in learning sequences of localized time-frequency patterns which are highly interpretable from an acoustic-phonetic viewpoint. While the work and the results are preliminary, they suggest that pursuing these techniques further could lead to new approaches to acoustic modeling for ASR which are more noise robust and offer better encoding of temporal dynamics than typical features such as frame-based cepstra.
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局域时频模式检测器的语音识别
提出了一种基于学习和检测频谱图中局部时频模式的语音声学建模方法。利用增强算法建立分类器,并从滤波谱图得到的大量特征中进行特征选择。最初的实验是为了区分Aurora数据库中的数字。该系统成功地学习了局部时频模式序列,从声学-语音的角度来看,这些序列具有很高的可解释性。虽然这项工作和结果是初步的,但他们认为,进一步研究这些技术可能会导致ASR声学建模的新方法,这些方法比基于帧的倒频谱等典型特征更具噪声鲁棒性,并提供更好的时间动态编码。
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