基于交叉语音数据集的深度神经网络单耳语音增强

N. Jamal, N. Fuad, Shahnoor Shanta, M. N. A. Sha'abani
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引用次数: 0

摘要

基于深度神经网络(DNN)的掩码估计方法是一种新兴的单音语音增强算法。它通过计算在噪声语音信号的特定帧中占主导地位的语音或噪声来增强来自噪声背景的语音信号。它可以构造复杂的模型进行非线性处理。然而,基于dnn的掩码算法的局限性是对目标人群的泛化。过去的研究工作主要集中在他们的目标数据集,因为音频录制会话的时间消耗。因此,在这项工作中,使用不同的记录条件来研究基于dnn的掩码估计方法的性能。研究结果表明,不同的语言测试数据集以及不同的条件可能不会对语音增强性能产生太大影响,因为算法只学习噪声信息。但是,当训练模型设计得当时,语音增强的性能是有希望的,特别是在训练过程中输入数据集中涉及的样本变化较少的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monaural Speech Enhancement using Deep Neural Network with Cross-Speech Dataset
Deep Neural Network (DNN)-based mask estimation approach is an emerging algorithm in monaural speech enhancement. It is used to enhance speech signals from the noisy background by calculating either speech or noise dominant in a particular frame of the noisy speech signal. It can construct complex models for nonlinear processing. However, the limitation of the DNN-based mask algorithm is a generalization of the targeted population. Past research works focused on their target dataset because of time consumption for the audio recording session. Thus, in this work, different recording conditions were used to study the performance of the DNN-based mask estimation approach. The findings revealed that different language test dataset, as well as different conditions, may not give large impact in speech enhancement performance since the algorithm only learn the noise information. But, the performance of speech enhancement is promising when the trained model has been designed properly, especially given the less sample variations in the input dataset involved during the training session.
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