论文标题
可变速率层次结构CPC导致语音中的声学单位发现
Variable-rate hierarchical CPC leads to acoustic unit discovery in speech
论文作者
论文摘要
深度学习的成功来自其通过学习根据低级阶段定义的高级表示来捕获数据层次结构的能力。在本文中,我们通过应用多个对比度预测编码(CPC)探讨了对语音层次表示的自我监督的学习。我们观察到,仅仅堆叠两个CPC模型不会比单层体系结构产生重大改进。受到语音通常被描述为一系列离散单元的序列的启发,我们提出了一个模型,其中低级CPC模块的输出不均匀地采样以直接最大程度地减少高级CPC模块的损失。后者旨在通过通过集中的阴性采样和量化预测目标来实施连续的高级表示的差异,从而在其表示形式中实现了可分离性和离散性。通过下游语音识别任务来衡量的单级CPC特征,对语音信号的结构进行核算改善,并增强了学习表示形式的分离,同时导致对信号的有意义的分割,与手机边界非常相似。
The success of deep learning comes from its ability to capture the hierarchical structure of data by learning high-level representations defined in terms of low-level ones. In this paper we explore self-supervised learning of hierarchical representations of speech by applying multiple levels of Contrastive Predictive Coding (CPC). We observe that simply stacking two CPC models does not yield significant improvements over single-level architectures. Inspired by the fact that speech is often described as a sequence of discrete units unevenly distributed in time, we propose a model in which the output of a low-level CPC module is non-uniformly downsampled to directly minimize the loss of a high-level CPC module. The latter is designed to also enforce a prior of separability and discreteness in its representations by enforcing dissimilarity of successive high-level representations through focused negative sampling, and by quantization of the prediction targets. Accounting for the structure of the speech signal improves upon single-level CPC features and enhances the disentanglement of the learned representations, as measured by downstream speech recognition tasks, while resulting in a meaningful segmentation of the signal that closely resembles phone boundaries.