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A real-time training-free laughter detection system based on novel syllable segmentation and correlation methods

机译:基于新型音节分割和相关方法的自由训练笑声检测系统

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In this paper, a laughter detection system based on the correlation characteristic of signals is proposed. The advantages of the system are speaker independent, low-computational and training-free. To achieve the goal, a modified autocorrelation function (MACF) is combined with a new approach called vocal tract transfer detector (VTTD) for segmenting an input signal into a syllable stream. Next, based on each syllable's Mel-scale frequency cepstral coefficients (MFCCs), the correlation between two consecutive syllables is measured by the dynamic time warping (DTW) algorithm. The consecutive syllables with high correlation are considered as a laughter segment. In our experimental result, the proposed system can achieve an accuracy rate of 88.67%. Besides, compared with the baseline, the proposed system can reduce the word error rate (WER) of syllable segmentation by 5.9%. Such results indicate that the proposed method is effective in detecting laughter, thereby demonstrating the feasibility of the system.
机译:在本文中,基于信号的相关特性的笑声检测系统提出。系统的优点是扬声器独立,低计算和无培训。为了实现目标,修改的自相关函数(MACF)与称为声道传输检测器(VTTD)的新方法组合,用于将输入信号分段为音节流。接着,基于每个音节的梅尔刻度倒谱系数(MFCC),两个连续的音节之间的相关性是由动态时间规整(DTW)算法进行测定。具有高相关的连续音节被视为笑声片段。在我们的实验结果中,所提出的系统可以达到88.67%的准确率。此外,与基线相比,所提出的系统可以将音节分段的字误差率(WER)减少5.9%。这些结果表明该方法在检测笑声方面是有效的,从而证明了系统的可行性。

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