端到端语音识别的少量学习:支持集生成的架构变体

Dhanya Eledath, Narasimha Rao Thurlapati, V. Pavithra, Tirthankar Banerjee, V. Ramasubramanian
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引用次数: 1

摘要

在本文中,我们提出了我们最近将“少量射击学习”(FSL)框架“匹配网络”(MN)改编为端到端(E2E)连续语音识别(CSR)的两个架构变体,其公式称为“MN- ctc”,其中包括基于ctc损失的端到端MN情景训练和相关的基于ctc的连续语音解码。MN理论的一个重要组成部分是训练和推理过程中的标记支持集。本文提出并研究了E2E CSR的架构变体,即“不耦合的MN-CTC”和“耦合的MN-CTC”,解决了从连续语音中生成监督支持集的问题。“不耦合的MN- ctc”生成MN架构“外部”的支持集,而“耦合的MN- ctc”变体是一个衍生框架,它通过多任务公式耦合支持集生成损失和主要MN- ctc损失来生成MN架构“内部”的支持集,以共同优化MN的支持集和嵌入函数。在TIMIT和librisspeech数据集上,我们建立了具有PER和LER性能的拟议变体的“少射”有效性,并通过librisspeech训练的“耦合MN-CTC”变体推理在TIMIT低资源目标语料库上证明了MN-CTC公式的跨域适用性,比单域(仅TIMIT)场景具有8%(绝对)的LER优势。
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Few-shot learning for E2E speech recognition: architectural variants for support set generation
In this paper, we propose two architectural variants of our recent adaptation of a ‘few shot-learning’ (FSL) framework ‘Matching Networks’ (MN) to end-to-end (E2E) continuous speech recognition (CSR) in a formulation termed ‘MN-CTC’ which involves a CTC-loss based end-to-end episodic training of MN and an associated CTC-based decoding of continuous speech. An important component of the MN theory is the labelled support-set during training and inference. The architectural variants proposed and studied here for E2E CSR, namely, the ‘Uncoupled MN-CTC’ and the ‘Coupled MN-CTC’, address this problem of generating supervised support sets from continuous speech. While the ‘Uncoupled MN-CTC’ generates the support-sets ‘outside’ the MN-architecture, the ‘Coupled MN-CTC’ variant is a derivative framework which generates the support set ‘within’ the MN-architecture through a multi-task formulation coupling the support-set generation loss and the main MN-CTC loss for jointly optimizing the support-sets and the embedding functions of MN. On TIMIT and Librispeech datasets, we establish the ‘few-shot’ effectiveness of the proposed variants with PER and LER performances and also demonstrate the cross-domain applicability of the MN-CTC formulation with a Librispeech trained ‘Coupled MN-CTC’ variant inferencing on TIMIT low resource target-corpus with a 8% (absolute) LER advantage over a single-domain (TIMIT only) scenario.
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