Differential evolution schemes for speech segmentation: A comparative study

Sunday Iliya, Ferrante Neri, D. Menzies, P. Cornelius, L. Picinali
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引用次数: 4

Abstract

This paper presents a signal processing technique for segmenting short speech utterances into unvoiced and voiced sections and identifying points where the spectrum becomes steady. The segmentation process is part of a system for deriving musculoskeletal articulation data from disordered utterances, in order to provide training feedback. The functioning of the signal processing technique has been optimized by selecting the parameters of the model. The optimization has been carried out by testing and comparing multiple Differential Evolution implementations, including a standard one, a memetic one, and a controlled randomized one. Numerical results have also been compared with a famous and efficient swarm intelligence algorithm. For the given problem, Differential Evolution schemes appear to display a very good performance as they can quickly reach a high quality solution. The binomial crossover appears, for the given problem, beneficial with respect to the exponential one. The controlled randomization appears to be the best choice in this case. The overall optimized system proved to segment well the speech utterances and efficiently detect its uninteresting parts.
语音分割的差分进化方案:比较研究
本文提出了一种信号处理技术,用于将短语音分割为不浊音和浊音部分,并识别频谱变得稳定的点。分割过程是一个系统的一部分,用于从无序的话语中提取肌肉骨骼发音数据,以提供训练反馈。通过对模型参数的选择,优化了信号处理技术的功能。通过测试和比较多种差分进化实现,包括标准差分进化实现、模因差分进化实现和随机控制差分进化实现,进行了优化。数值结果还与一种著名的高效群智能算法进行了比较。对于给定的问题,差分进化方案表现出非常好的性能,因为它们可以快速得到高质量的解。对于给定的问题,二项交叉似乎比指数交叉更有利。在这种情况下,受控随机化似乎是最好的选择。优化后的系统能够很好地分割语音,有效地检测出无趣部分。
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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