小波散射变换和CNN用于闭集说话人识别

Wajdi Ghezaiel, L. Brun, O. Lézoray
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引用次数: 9

摘要

在实际应用中,说话人识别系统的性能会由于语音数量和质量的减少而下降。为此,我们提出了一个说话人识别系统,其中使用少量训练示例的短话语来识别人。因此,只使用非常少量的数据,涉及一个2-4秒的句子。为了实现这一点,我们提出了一种新颖的原始波形端到端卷积神经网络(CNN),用于文本无关的说话人识别。我们使用小波散射变换作为CNN网络第一层的固定初始化,并以监督的方式学习剩余的层。实验表明,结合小波散射变换和CNN的混合结构,即使训练样本数量少、持续时间短,也能成功地进行高效的说话人特征提取。
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Wavelet Scattering Transform and CNN for Closed Set Speaker Identification
In real world applications, the performances of speaker identification systems degrade due to the reduction of both the amount and the quality of speech utterance. For that particular purpose, we propose a speaker identification system where short utterances with few training examples are used for person identification. Therefore, only a very small amount of data involving a sentence of 2-4 seconds is used. To achieve this, we propose a novel raw waveform end-to-end convolutional neural network (CNN) for text-independent speaker identification. We use wavelet scattering transform as a fixed initialization of the first layers of a CNN network, and learn the remaining layers in a supervised manner. The conducted experiments show that our hybrid architecture combining wavelet scattering transform and CNN can successfully perform efficient feature extraction for a speaker identification, even with a small number of short duration training samples.
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