ASR - VLSP 2021: Automatic Speech Recognition with Blank Label Re-weighting

T. Thang, Dang Dinh Son, Le Dang Linh, Dang Xuan Vuong, Duong Quang Tien
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引用次数: 3

Abstract

End-to-end models have significant potential in most languages and recently proved the robustness in ASR tasks. Many robust architectures are proposed, and among many techniques, Recurrent Neural Network - Transducer (RNN-T) shows remarkable success. However, with background noise or reverb in spontaneous speech, this architecture generally suffers from high deletion error problems. For this reason, we propose the blank label re-weighting technique to improve the state-of-the-art Conformer transducer model. Our proposed system adopts the Stochastic Weight Averaging approach, stabilizing the training process. Our work achieved the first rank with a 4.17% of word error rate in Task 2 of the VLSP 2021 Competition.  
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ASR - VLSP 2021:自动语音识别与空白标签重加权
端到端模型在大多数语言中具有巨大的潜力,并且最近证明了其在ASR任务中的鲁棒性。许多鲁棒架构被提出,在众多技术中,递归神经网络-传感器(RNN-T)取得了显著的成功。然而,在自发语音中存在背景噪声或混响时,这种结构通常存在较高的删除错误问题。因此,我们提出了空白标签重加权技术来改进最先进的共形换能器模型。我们提出的系统采用随机加权平均方法,稳定了训练过程。我们的工作在VLSP 2021竞赛的Task 2中以4.17%的错误率获得了第一名。
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