A spectral transition measure based MELCEPSTRAL features for obstruent detection

Bhavik B. Vachhani, Kewal D. Malde, Maulik C. Madhavi, H. Patil
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引用次数: 2

Abstract

Obstruents are the key landmark events found in the speech signal. In this paper, we propose use of spectral transition measure (STM) to locate the obstruents in the continuous speech. The proposed approach does not take in to account any prior information (like phonetic sequence, speech transcription, and number of obstruents in the speech). Hence this approach is unsupervised and unconstraint approach. In this paper, we propose use of state-of-the-art Mel Frequency Cepstral Coefficients (MFCC)-based features to capture spectral transition for obstruent detection task. It is expected more spectral transition in the vicinity of obstruents. The entire experimental setup is developed on TIMIT database. The detection efficiency and estimated probability are around 77 % and 0.77 respectively (with 30 ms agreement duration and 0.4 STM threshold).
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基于MELCEPSTRAL特征的光谱跃迁测量用于障碍物检测
障碍是在语音信号中发现的关键地标事件。在本文中,我们提出使用频谱转移测量(STM)来定位连续语音中的障碍物。该方法不考虑任何先验信息(如语音序列、语音转录和语音中障碍的数量)。因此,这种方法是无监督和无约束的方法。在本文中,我们建议使用最先进的Mel频率倒谱系数(MFCC)为基础的特征来捕捉频谱转移阻塞检测任务。预计在障碍物附近会有更多的光谱转变。整个实验装置是在TIMIT数据库上开发的。检测效率和估计概率分别约为77%和0.77(协议持续时间为30 ms,阈值为0.4 STM)。
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