Dual Stages of Speech Enhancement Algorithm Based on Super Gaussian Speech Models

Humam Awad Hussein, Shams Moaied Hameed, Basheera M. Mahmmod, S. Abdulhussain, Abir Hussain
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Abstract

Various speech enhancement Algorithms (SEA) have been developed in the last few decades. Each algorithm has its advantages and disadvantages because the speech signal is affected by environmental situations. Distortion of speech results in the loss of important features that make this signal challenging to understand. SEA aims to improve the intelligibility and quality of speech that different types of noise have degraded. In most applications, quality improvement is highly desirable as it can reduce listener fatigue, especially when the listener is exposed to high noise levels for extended periods (e.g., manufacturing). SEA reduces or suppresses the background noise to some degree, sometimes called noise suppression algorithms. In this research, the design of SEA based on different speech models (Laplacian model or Gaussian model) has been implemented using two types of discrete transforms, which are Discrete Tchebichef Transform and Discrete Tchebichef-Krawtchouk Transforms. The proposed estimator consists of dual stages of a wiener filter that can effectively estimate the clean speech signal. The evaluation measures' results show the proposed SEA's ability to enhance the noisy speech signal based on a comparison with other types of speech models and a self-comparison based on different types and levels of noise. The presented algorithm's improvements ratio regarding the average SNRseq are 1.96, 2.12, and 2.03 for Buccaneer, White, and Pink noise, respectively.
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基于超高斯语音模型的双阶段语音增强算法
在过去的几十年里,各种语音增强算法(SEA)得到了发展。由于语音信号受环境情况的影响,每种算法都有其优点和缺点。语音失真会导致重要特征的丧失,而这些特征会使信号难以理解。SEA旨在提高语音的可理解性和质量,不同类型的噪音已经降低。在大多数应用中,质量改进是非常可取的,因为它可以减少听者的疲劳,特别是当听者长时间暴露于高噪音水平时(例如,制造)。SEA在一定程度上减少或抑制背景噪声,有时称为噪声抑制算法。本研究利用离散Tchebichef变换和离散Tchebichef- krawtchouk变换两种离散变换实现了基于不同语音模型(拉普拉斯模型或高斯模型)的SEA设计。该估计器由双级维纳滤波器组成,可以有效地估计干净的语音信号。通过与其他类型语音模型的比较和基于不同类型和水平噪声的自我比较,评价指标的结果表明所提出的SEA具有增强噪声语音信号的能力。该算法对Buccaneer噪声、White噪声和Pink噪声的平均snseq的改进率分别为1.96、2.12和2.03。
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24
审稿时长
16 weeks
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