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Papers/Lightweight Transducer Based on Frame-Level Criterion

Lightweight Transducer Based on Frame-Level Criterion

Genshun Wan, Mengzhi Wang, Tingzhi Mao, Hang Chen, Zhongfu Ye

2024-09-05Speech Recognitionimbalanced classification
PaperPDFCode(official)

Abstract

The transducer model trained based on sequence-level criterion requires a lot of memory due to the generation of the large probability matrix. We proposed a lightweight transducer model based on frame-level criterion, which uses the results of the CTC forced alignment algorithm to determine the label for each frame. Then the encoder output can be combined with the decoder output at the corresponding time, rather than adding each element output by the encoder to each element output by the decoder as in the transducer. This significantly reduces memory and computation requirements. To address the problem of imbalanced classification caused by excessive blanks in the label, we decouple the blank and non-blank probabilities and truncate the gradient of the blank classifier to the main network. Experiments on the AISHELL-1 demonstrate that this enables the lightweight transducer to achieve similar results to transducer. Additionally, we use richer information to predict the probability of blank, achieving superior results to transducer.

Results

TaskDatasetMetricValueModel
Speech RecognitionAISHELL-1Params(M)45.3Lightweight Transducer With LM
Speech RecognitionAISHELL-1Word Error Rate (WER)4.03Lightweight Transducer With LM
Speech RecognitionAISHELL-1Params(M)45.3Lightweight Transducer
Speech RecognitionAISHELL-1Word Error Rate (WER)4.31Lightweight Transducer

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