DNN based Robust Speech Feature Extraction and Signal Noise Removal Method Using Improved Average Prediction LMS Filter for Speech Recognition

Sangshin Oh
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引用次数: 2

Abstract

In the field of speech recognition, as the DNN is applied, the use of speech recognition is increasing, but the amount of calculation for parallel training needs to be larger than that of the conventional GMM , and if the amount of data is small, overfitting occurs. To solve this problem, we propose an efficient method for robust voice feature extraction and voice signal noise removal even when the amount of data is small. Speech feature extraction efficiently extracts speech energy by applying the difference in frame energy for speech and the zero-crossing ratio and level-crossing ratio that are affected by the speech signal. In addition, in order to remove noise, the noise of the speech signal is removed by removing the noise of the speech signal with an average predictive improved LMS filter with little loss of speech information while maintaining the intrinsic characteristics of speech in detection of the speech signal . The improved LMS filter uses a method of processing noise on the input speech signal by adjusting the active parameter threshold for the input signal. As a result of comparing the method proposed in this paper with the conventional frame energy method, it was confirmed that the error rate at the start point of speech is 7% and the error rate at the end point is improved by 11%.
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基于深度神经网络的鲁棒语音特征提取及基于改进平均预测LMS滤波的语音识别降噪方法
在语音识别领域,随着DNN的应用,语音识别的使用量越来越大,但并行训练的计算量需要比传统的GMM更大,如果数据量很小,就会出现过拟合。为了解决这一问题,我们提出了一种即使在数据量很小的情况下也能鲁棒提取语音特征和去除语音信号噪声的有效方法。语音特征提取是利用语音的帧间能量差以及语音信号对过零比和过平比的影响,有效提取语音能量。此外,为了去除噪声,在检测语音信号时,在保持语音固有特征的同时,使用平均预测改进LMS滤波器去除语音信号中的噪声,使语音信息损失很少,从而去除语音信号中的噪声。改进的LMS滤波器通过调整输入信号的活动参数阈值来处理输入语音信号上的噪声。将本文提出的方法与传统的帧能量法进行了比较,结果表明,语音起始点错误率为7%,结束点错误率提高了11%。
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