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Normalized Wavelet Hybrid Feature for Consonant Classification in Noisy Environments

机译:在嘈杂环境中的辅音分类标准化小波混合特征

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This paper investigates on the use of Wavelet Transform (WT) to model and recognize the utterances of Consonant - Vowel (CV) speech units in noisy environments. The peculiarity of the proposed method lies in the fact that using WT, non stationary nature of the speech signal can be accurately considered. A hybrid feature extraction namely Normalized Wavelet Hybrid Feature (NWHF) using the combination of Classical Wavelet Decomposition (CWD) and Wavelet Packet Decomposition (WPD) along with z-score normalization technique are studied here. CV speech unit recognition tasks performed for noisy speech units using Artificial Neural Network (ANN) and k - Nearest Neighborhood (k - NN) are also presented. The result indicates the robustness of the proposed technique based on WT in additive noisy condition.
机译:本文调查了小波变换(WT)来模拟,识别嘈杂环境中辅音元音(CV)语音单元的话语。所提出的方法的特殊性在于,可以准确地考虑使用WT的非静止性质。这里研究了一种混合特征提取即归一化小波混合特征(NWHF),使用经典小波分解(CWD)和小波分组分解(WPD)以及Z-Score标准化技术的组合。还呈现了使用人工神经网络(ANN)和K - 最近的邻域(K-NN)对嘈杂语音单元执行的CV语音单元识别任务。结果表明了基于加性嘈杂条件的基于WT的提出技术的鲁棒性。

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