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MULTIPLE OBJECTIVE OPTIMIZATION APPLIED TO SPEECH ENHANCEMENT PROBLEM

机译:应用于语音增强问题的多个客观优化

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摘要

Enhancement of speech corrupted by broadband noise is subject of interest in many applications. For several years, the investigation of methods of denoising the vocal signal has yielded very satisfactory results, but certain problems and questions still remain. The term speech quality in speech enhancement is associated with clarity and intelligibility. So, one of these issues is to reach a compromise between noise reduction, signal distortion and musical noise. In this paper, we studied one of the classical techniques based on the spectral subtraction developed by Boll and improved by Berouti where two parameters alpha and beta to control the effects of the distortion and the musical noise are introduced. However, the choice on these parameters (alpha and beta) remains empirical. Our works is to find a compromise between these two parameters to obtain an optimal solution depending on the environment, the unknown noise and its level. Moreover, we propose in this paper, an algorithm based on bi-objective approach precisely Particle Swarm Optimization (PSO) technique in association with speech enhancement technique proposed by Beroutiet al.Comparative results show that the performance of our proposed method with several types of noise, depending on the environment and on various noise levels, are better than those of spectral subtraction methods of Boll or Berouti.
机译:宽带噪声损坏的言语增强是许多应用中感兴趣的主题。几年来,去噪方法的调查产生了非常令人满意的结果,但仍然存在某些问题和问题。语音增强中的术语语音质量与清晰度和可懂度有关。因此,其中一个问题是在降噪,信号失真和音乐噪声之间达到妥协。在本文中,我们研究了基于由Boll开发的光谱减法的经典技术之一,并通过Berouti改进,其中两个参数α和β控制失真和音乐噪声的效果。但是,对这些参数(Alpha和Beta)的选择仍然是经验的。我们的作品是在这两个参数之间找到妥协,以根据环境,未知的噪声及其水平获得最佳解决方案。此外,我们提出了一种基于双目标方法的算法,该算法与Beroutiet Al.Comperative结果提出的语音增强技术相关联的粒子群优化(PSO)技术表明,我们提出的方法具有几种类型的噪音,取决于环境和各种噪声水平,优于Boll或Berouti的光谱减法方法。

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