Speaker Independent Phoneme Recognition Based on Fisher Weight Map

Takashi Muroi, T. Takiguchi, Y. Ariki
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引用次数: 6

Abstract

We have already proposed a new feature extraction method based on higher-order local auto-correlation and Fisher weight map (FWM) at Interspeech2006. This paper shows effectiveness of the proposed FWM in speaker dependent and speaker independent phoneme recognition. Widely used MFCC (Mel-frequency cepstrum coefficient) features lack temporal dynamics. To solve this problem, local auto-correlation features are computed and accumulated by weighting high scores on the discriminative areas. This score map is called Fisher weight map. From the speaker dependent phoneme recognition, the proposed FWM showed 79.5% recognition rate, by 5.0 points higher than the result by MFCC. Furhermore by combing FWM with MFCC and DeltaMFCC, the recognition rate improved to 88.3%. In the speaker independent phoneme recognition, it showed 84.2% recognition rate, by 11.0 points higher than the result by MFCC. By combining FWM with MFCC and DeltaMFCC, the reecognition rate improved to 89.0%.
基于Fisher权重图的说话人独立音素识别
我们已经在Interspeech2006上提出了一种基于高阶局部自相关和Fisher权重图(FWM)的特征提取方法。本文验证了该方法在依赖和独立说话人音素识别中的有效性。广泛使用的mel -倒频谱系数(MFCC)特征缺乏时间动态性。为了解决这个问题,计算局部自相关特征,并通过对判别区域的高分加权来累积特征。这个分数图被称为费雪权重图。从依赖说话人的音素识别来看,所提出的FWM的识别率为79.5%,比MFCC的结果提高了5.0分。此外,将FWM与MFCC和DeltaMFCC相结合,识别率提高到88.3%。在说话人独立音位识别中,其识别率为84.2%,比MFCC的结果高出11.0分。将FWM与MFCC和DeltaMFCC相结合,识别率提高到89.0%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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