Transformer Based Deliberation for Two-Pass Speech Recognition

Ke Hu, Ruoming Pang, Tara N. Sainath, Trevor Strohman
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引用次数: 29

Abstract

Interactive speech recognition systems must generate words quickly while also producing accurate results. Two-pass models excel at these requirements by employing a first-pass decoder that quickly emits words, and a second-pass decoder that requires more context but is more accurate. Previous work has established that a deliberation network can be an effective second-pass model. The model attends to two kinds of inputs at once: encoded audio frames and the hypothesis text from the first-pass model. In this work, we explore using transformer layers instead of long-short term memory (LSTM) layers for deliberation rescoring. In transformer layers, we generalize the "encoder-decoder" attention to attend to both encoded audio and first-pass text hypotheses. The output context vectors are then combined by a merger layer. Compared to LSTM-based deliberation, our best transformer deliberation achieves 7% relative word error rate improvements along with a 38% reduction in computation. We also compare against non-deliberation transformer rescoring, and find a 9% relative improvement.
基于变压器的二次语音识别算法
交互式语音识别系统必须快速生成单词,同时产生准确的结果。通过采用第一遍解码器快速输出单词,第二遍解码器需要更多上下文,但更准确,两遍模型在这些要求上表现出色。先前的工作已经证明,审议网络可以是一个有效的二次审查模型。该模型同时处理两种输入:编码音频帧和来自第一遍模型的假设文本。在这项工作中,我们探索使用变压器层代替长短期记忆(LSTM)层进行深思熟虑记录。在变压器层中,我们将“编码器-解码器”的注意力推广到编码音频和第一遍文本假设。然后,输出上下文向量通过合并层进行组合。与基于lstm的审议相比,我们最好的变压器审议实现了7%的相对单词错误率改进,同时减少了38%的计算量。我们还比较了非审议变压器评分,并发现9%的相对改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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