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首页> 外文期刊>Tsinghua Science and Technology >Peripheral nonlinear time spectrum features algorithm for large vocabulary mandarin automatic speech recognition
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Peripheral nonlinear time spectrum features algorithm for large vocabulary mandarin automatic speech recognition

机译:大词汇量自动语音识别的外围非线性时谱特征算法

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摘要

This work describes an improved feature extractor algorithm to extract the peripheral features of point x(ti, fj) using a nonlinear algorithm to compute the nonlinear time spectrum (NL-TS) pattern. The algorithm observes n×n neighborhoods of the point in all directions, and then incorporates the peripheral features using the Mel frequency cepstrum components (MFCCs)-based feature extractor of the Tsinghua electronic engineering speech processing (THEESP) for Mandarin automatic speech recognition (MASR) system as replacements of the dynamic features with different feature combinations. In this algorithm, the orthogonal bases are extracted directly from the speech data using discrite cosime transformation (OCT) with 3×3 blocks on an NL-TS pattern as the peripheral features. The new primal bases are then selected and simplified in the form of the δdp-t operator in the time direction and the δdp-f operator in the frequency direction. The algorithm has 23.29% improvements of the relative error rate in comparison with the standard MFCC feature-set and the dynamic features in tests using THEESP with the duration distribution-based hidden Markov model (DDBHMM) based on MASR system.
机译:这项工作描述了一种改进的特征提取算法,该算法使用非线性算法来计算点的x(t i ,f j )的外围特征,以计算非线性时间谱(NL- TS)模式。该算法在所有方向上观察该点的n×n个邻域,然后使用清华电子工程语音处理(THEESP)的基于梅尔频率倒谱分量(MFCCs)的特征提取器合并周边特征,以进行普通话自动语音识别(MASR) )系统,以不同的功能组合替代动态功能。在该算法中,使用以NL-TS模式上的3×3块为周边特征的圆盘余弦变换(OCT),直接从语音数据中提取正交基。然后以时间方向上的δ dp-t 算子和频率方向上的δ dp-f 算子的形式选择和简化新的基数。与标准MFCC功能集和使用基于MASR系统的基于持续时间分布的隐马尔可夫模型(DDBHMM)的THEESP进行的测试中的动态功能相比,该算法的相对错误率提高了23.29%。

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