Exploring the role of phonetic bottleneck features for speaker and language recognition

Mitchell McLaren, L. Ferrer, A. Lawson
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引用次数: 44

Abstract

Using bottleneck features extracted from a deep neural network (DNN) trained to predict senone posteriors has resulted in new, state-of-the-art technology for language and speaker identification. For language identification, the features' dense phonetic information is believed to enable improved performance by better representing language-dependent phone distributions. For speaker recognition, the role of these features is less clear, given that a bottleneck layer near the DNN output layer is thought to contain limited speaker information. In this article, we analyze the role of bottleneck features in these identification tasks by varying the DNN layer from which they are extracted, under the hypothesis that speaker information is traded for dense phonetic information as the layer moves toward the DNN output layer. Experiments support this hypothesis under certain conditions, and highlight the benefit of using a bottleneck layer close to the DNN output layer when DNN training data is matched to the evaluation conditions, and a layer more central to the DNN otherwise.
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探讨语音瓶颈特征在说话人和语言识别中的作用
使用从深度神经网络(DNN)中提取的瓶颈特征来预测senone后验,已经产生了新的,最先进的语言和说话者识别技术。对于语言识别,特征的密集语音信息被认为可以通过更好地表示依赖于语言的电话分布来提高性能。对于说话人识别,考虑到DNN输出层附近的瓶颈层被认为包含有限的说话人信息,这些特征的作用不太清楚。在本文中,我们通过改变从其提取的DNN层来分析瓶颈特征在这些识别任务中的作用,假设随着层向DNN输出层移动,说话人信息被交换为密集的语音信息。实验在一定条件下支持这一假设,并强调了当DNN训练数据与评估条件相匹配时,使用靠近DNN输出层的瓶颈层,而在其他情况下使用更靠近DNN中心的层的好处。
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