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Two-Layer Decision Model Based on Noise Classification

机译:基于噪声分类的两层决策模型

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摘要

Generally, the performance of endpoint detection is affected by the noise. In this paper, we propose a novel two-layer decision model based on noise classification to detect the activity voice robustly. The training processing mainly contains two steps: firstly, we employ the noisex-92 database, which consists of different types of pure noise, to train a BP neural network in order to classify the noise type precisely, secondly, we train BP neural networks for each noise type covering large range of signal noise ratio (SNR). In the testing phase, we assume that the short period of silence at the beginning of the signal contains features for noise and utilize them to get the noise type. Then, we use the classifier corresponding to the noise type to detect activity voice. We conduct experiments on TIMIT corpus for 5 noise types under 7 SNR conditions. And experimental results show that our method outperforms global classifier, especially in low SNR condition.
机译:通常,端点检测的性能受噪声影响。在本文中,我们提出了一种基于噪声分类的新颖的两层决策模型,用于鲁棒地检测活动语音。训练过程主要包括两个步骤:首先,我们使用由不同类型的纯噪声组成的noisex-92数据库来训练BP神经网络,以便对噪声类型进行精确分类;其次,我们训练BP神经网络来进行分类。每种噪声类型都覆盖大范围的信号噪声比(SNR)。在测试阶段,我们假设信号开始时的短暂静音包含噪声特征,并利用它们获得噪声类型。然后,我们使用与噪声类型相对应的分类器来检测活动语音。我们在TIMIT语料库上针对7种SNR条件下的5种噪声类型进行了实验。实验结果表明,该方法优于全局分类器,特别是在低信噪比条件下。

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