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Improved Statistical Speech Segmentation Using Connectionist Approach | Science Publications

机译:连接主义方法改进统计语音分割科学出版物

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> Problem statement: Speech segmentation is an important part for speech recognition, synthesizing and coding. Statistical based approach detects segmentation points via computing spectral distortion of the signal without prior knowledge of the acoustic information proved to be able to give good match, less omission but lot of insertion. These insertion points dropped segmentation accuracy. Approach: This study proposed a fusion method between statistical and connectionist approaches namely the divergence algorithm and Multi Layer Perceptron (MLP) with adaptive learning for segmentation of Malay connected digit with the aim to improve statistical approach via detection of insertion points. The neural network was optimized via trial and error in finding suitable parameters and speech time normalization methods. The best neural network classifier was then fusion with divergence algorithm to make segmentation. Results: The results of the experiments showed that the best neural network classifier used learning rate of value 1.0 and momentum rate of value 0.9 with data normalization based on zero-padded. The segmentation using fusion of statistical and connectionist was able to reduce insertion points up to 10.4% while maintaining match points above 99% and omission point below 0.7% within time tolerance of 0.09 second. Conclusion: The result of segmentation using the proposed fusion method indicated potential use of connectionist approach in improving continuous segmentation by statistical approach.
机译: > 问题陈述:语音分割是语音识别,合成和编码的重要组成部分。基于统计的方法通过计算信号的频谱失真来检测分割点,而无需事先了解声学信息,事实证明能够提供良好的匹配,较少的遗漏但插入量很大。这些插入点降低了分割精度。 方法:本研究提出了一种统计和连接方法之间的融合方法,即发散算法和具有自适应学习的多层感知器(MLP)进行马来连接数字分割的目的,旨在通过检测插入点。通过反复试验找到合适的参数和语音时间归一化方法,对神经网络进行了优化。然后将最佳的神经网络分类器与散度算法融合以进行分割。结果:实验结果表明,最佳的神经网络分类器将学习率1.0和动量率0.9与数据基于零填充的归一化。使用统计和连接专家的融合进行的细分能够将插入点减少多达10.4%,同时在0.09秒的时间公差内将匹配点保持在99%以上,遗漏点保持在0.7%以下。 结论:使用所提出的融合方法进行分割的结果表明,使用连接主义方法可以改善通过统计方法进行的连续分割。

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