CLAIDec 22, 2017

Letter-Based Speech Recognition with Gated ConvNets

arXiv:1712.09444v273 citations
Originality Incremental advance
AI Analysis

This work addresses speech recognition for general applications by improving letter-based methods, but it is incremental as it builds on existing approaches like CTC and ASG.

The paper tackled the problem of letter-based speech recognition by proposing a ConvNet acoustic model with Gated Linear Units and high dropout, achieving performance matching the best existing letter-based systems on WSJ and near state-of-the-art on LibriSpeech.

In the recent literature, "end-to-end" speech systems often refer to letter-based acoustic models trained in a sequence-to-sequence manner, either via a recurrent model or via a structured output learning approach (such as CTC). In contrast to traditional phone (or senone)-based approaches, these "end-to-end'' approaches alleviate the need of word pronunciation modeling, and do not require a "forced alignment" step at training time. Phone-based approaches remain however state of the art on classical benchmarks. In this paper, we propose a letter-based speech recognition system, leveraging a ConvNet acoustic model. Key ingredients of the ConvNet are Gated Linear Units and high dropout. The ConvNet is trained to map audio sequences to their corresponding letter transcriptions, either via a classical CTC approach, or via a recent variant called ASG. Coupled with a simple decoder at inference time, our system matches the best existing letter-based systems on WSJ (in word error rate), and shows near state of the art performance on LibriSpeech.

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The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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