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Acoustic Feature Analysis and Discriminative Modeling of Filled Pauses for Spontaneous Speech Recognition

机译:自发语音识别的填充暂停的声学特征分析和判别建模

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Most automatic speech recognizers (ASRs) concentrate on read speech, which is different from spontaneous speech with disfluencies. ASRs cannot deal with speech with a high rate of disfluencies such as filled pauses, repetitions, lengthening, repairs, false starts and silence pauses. In this paper, we focus on the feature analysis and modeling of the filled pauses "ah," "ung," 'um," "em," and "hem" in spontaneous speech. Karhunen-Loeve transform (KLT) and linear discriminant analysis (LDA) were adopted to select discriminant features for filled pause detection. In order to suitably determine the number of discriminant features, Bartlett hypothesis testing was adopted. Twenty-six features were selected using Bartlett hypothesis testing. Gaussian mixture models (GMMs), trained with a gradient decent algorithm, were used to improve the filled pause detection performance. The experimental results show that the filled pause detection rates using KLT and LDA were 84.4% and 86.8%, respectively. A significant improvement was obtained in the filled pause detection rate using the discriminative GMM with KLT and LDA. In addition, the LDA features outperformed the KLT features in the detection of filled pauses.
机译:大多数自动语音识别器(ASR)都专注于阅读语音,这与具有自发性的自发语音不同。 ASR不能处理高语气的语音,例如充满的暂停,重复,延长,修复,错误的开始和静音暂停。在本文中,我们专注于自发语音中填充的“ ah”,“ ung”,“ um”,“ em”和“ hem”的特征分析和建模Karhunen-Loeve变换(KLT)和线性判别采用分析法(LDA)来选择区分特征以进行填充暂停检测;为了适当确定区分特征的数量,采用了Bartlett假设检验;​​使用Bartlett假设检验选择了26个特征;高斯混合模型(GMM),实验证明,采用KLT和LDA进行的填充暂停检测率分别为84.4%和86.8%,在梯度暂停算法的基础上进行了改进,提高了填充暂停检测的效率。使用具有KLT和LDA的判别性GMM进行速率评估此外,在检测到填充的停顿时,LDA功能要优于KLT功能。

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