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Neural Utterance Confidence Measure for RNN-Transducers and Two Pass Models

机译:RNN传感器和两个通行证模型的神经话语置信度量

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In this paper, we propose methods to compute confidence score on the predictions made by an end-to-end speech recognition model in a 2-pass framework. We use RNN-Transducer for a streaming model, and an attention-based decoder for the second pass model. We use neural technique to compute the confidence score, and experiment with various combinations of features from RNN-Transducer and second pass models. The neural confidence score model is trained as a binary classification task to accept or reject a prediction made by speech recognition model. The model is evaluated in a distributed speech recognition environment, and performs significantly better when features from second pass model are used as compared to the features from streaming model.
机译:在本文中,我们提出了在2通框架中计算由端到端语音识别模型所取得的预测的置信度分数的方法。 我们使用RNN传感器进行流式模型,以及用于第二传递模型的基于关注的解码器。 我们使用神经技术来计算置信度评分,并用来自RNN-换能器和第二通道模型的各种特征的实验。 神经置信度评分模型被培训为二进制分类任务,以接受或拒绝语音识别模型所做的预测。 当与来自流模型的特征相比,使用来自第二传递模型的特征时,在分布式语音识别环境中评估模型。

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