基于深度聚类的自监督表示学习在原始语音声学单元发现中的应用

Varun Krishna, Sriram Ganapathy
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引用次数: 1

摘要

从原始语音中自动发现声学子词单位,不需要任何文本或标签,是一个不断发展的研究领域。关键的挑战是推导出语音的表示,这些表示可以被分类为少数类似音素的单位,这些单位是说话者不变的,并且可以广泛地捕捉语音的内容可变性。在这项工作中,我们提出了一种新的神经网络范式,该范式使用深度聚类损失和自回归对比预测编码(CPC)损失。损失函数CPC和聚类损失都是自监督的。聚类成本包括使用迭代k-means算法生成的类音素标签的损失函数。这种损失的包含确保了模型表示可以被分类为少量的自动语音单元。我们对Zerospeech 2021挑战中的几个子任务进行了实验,以说明该框架的有效性。在这些实验中,我们表明,所提出的表征学习方法在一系列词级相似性任务和语言建模任务上,明显优于先前基于自我监督的模型以及wav2vec系列模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self Supervised Representation Learning with Deep Clustering for Acoustic Unit Discovery from Raw Speech
The automatic discovery of acoustic sub-word units from raw speech, without any text or labels, is a growing field of research. The key challenge is to derive representations of speech that can be categorized into a small number of phoneme-like units which are speaker invariant and can broadly capture the content variability of speech. In this work, we propose a novel neural network paradigm that uses the deep clustering loss along with the autoregressive contrastive predictive coding (CPC) loss. Both the loss functions, the CPC and the clustering loss, are self-supervised. The clustering cost involves the loss function using the phoneme-like labels generated with an iterative k-means algorithm. The inclusion of this loss ensures that the model representations can be categorized into a small number of automatic speech units. We experiment with several sub-tasks described as part of the Zerospeech 2021 challenge to illustrate the effectiveness of the framework. In these experiments, we show that proposed representation learning approach improves significantly over the previous self-supervision based models as well as the wav2vec family of models on a range of word-level similarity tasks and language modeling tasks.
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