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Learning Noise Invariant Features Through Transfer Learning For Robust End-to-End Speech Recognition

机译:通过转移学习来学习噪声不变特征,以实现可靠的端到端语音识别

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End-to-end models yield impressive speech recognition results on clean datasets while having inferior performance on noisy datasets. To address this, we propose transfer learning from a clean dataset (WSJ) to a noisy dataset (CHiME4) for connectionist temporal classification models. We argue that the clean classifier (the upper layers of a neural network trained on clean data) can force the feature extractor (the lower layers) to learn the underlying noise invariant patterns in the noisy dataset. While training on the noisy dataset, the clean classifier is either frozen or trained with a small learning rate. The feature extractor is trained with no learning rate re-scaling. The proposed method gives up to 15.5% relative character error rate (CER) reduction compared to models trained only on CHiME-4. Furthermore, we use the test sets of Aurora-4 to perform evaluation on unseen noisy conditions. Our method has significantly lower CERs (11.3% relative on average) on all 14 Aurora-4 test sets compared to the conventional transfer learning method (no learning rate rescale for any layer), indicating our method enables the model to learn noise invariant features.
机译:端到端模型在干净的数据集上产生令人印象深刻的语音识别结果,而在嘈杂的数据集上却表现不佳。为了解决这个问题,我们建议将学习过程从干净的数据集(WSJ)转移到嘈杂的数据集(CHiME4),用于连接主义的时间分类模型。我们认为干净分类器(在干净数据上训练过的神经网络的上层)可以迫使特征提取器(下层)学习嘈杂数据集中的基本噪声不变模式。在嘈杂的数据集上进行训练时,干净分类器将被冻结或以较低的学习率进行训练。特征提取器经过训练,没有学习速率的重新缩放。与仅在CHiME-4上训练的模型相比,所提出的方法最多可减少15.5%的相对字符错误率(CER)。此外,我们使用Aurora-4的测试集在看不见的嘈杂条件下进行评估。与传统的转移学习方法相比,我们的方法在所有14个Aurora-4测试集中具有显着更低的CER(相对于平均水平为11.3%)(任何层都没有学习速率的重新调整),这表明我们的方法使模型能够学习噪声不变特征。

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