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Investigation on the Effect of the Input Features in the Noise Level Classification of Noisy Speech

机译:对噪声语音噪声水平分类的输入特征效果的调查

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摘要

Noise Level Estimation plays a crucial role in Speech Enhancement (SE) Algorithms. Recently, few noise estimation (NE) algorithms are developed for SE using the minimal-tracking method, but there is little research done in the noise level classification (NLC). Therefore, there is a need to identify appropriate audio features that are required for the NLC. In this paper, this problem has been addressed and seventeen audio features of the noisy speech are examined for NLC using four different types of standard and efficient classifiers such as K-Nearest Neighbor (KNN), Naive Bayes (NB), Support Vector Machine (SVM), Decision Tree (DT) classifiers. The features are first optimized to achieve the best classification performance using the Principal Component Analysis (PCA) and the Neighbourhood Component Feature Selection (NCFS) method. Finally, a comparative performance analysis is carried out by taking six different categories of real-life noisy speech signals from the standard speech database and then the best set of features are reported and the best performing classifier for the NLC is identified.
机译:噪声水平估计在语音增强(SE)算法中起着至关重要的作用。最近,使用最小跟踪方法为SE开发了很少的噪声估计(NE)算法,但在噪声水平分类(NLC)中没有完成研究。因此,需要确定NLC​​所需的适当音频功能。在本文中,使用四种不同类型的标准和有效分类器(如K-Colless邻居(KNN),NAIVE Bayes(NB),支持向量机(NB),支持该问题,并针对NLC进行了解决问题,并且对NLC进行了噪声语音的17个音频功能。 SVM),决策树(DT)分类器。首先优化该功能以使用主成分分析(PCA)和邻域组件特征选择(NCFS)方法来实现最佳分类性能。最后,通过从标准语音数据库中采用六种不同类别的现实生活噪声语音信号进行比较绩效分析,然后报告了最佳的特征集,并识别了NLC的最佳执行分类器。

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