Qifusion-Net: Layer-adapted Stream/Non-stream Model for End-to-End Multi-Accent Speech Recognition
This work addresses the challenge of multi-accent speech recognition for ASR systems, presenting an incremental improvement with specific performance gains.
The paper tackles the problem of accurately recognizing multi-accent speech in end-to-end ASR by proposing Qifusion-Net, a layer-adapted fusion model that achieves relative reductions of 22.1% and 17.2% in character error rate on multi-accent test datasets.
Currently, end-to-end (E2E) speech recognition methods have achieved promising performance. However, auto speech recognition (ASR) models still face challenges in recognizing multi-accent speech accurately. We propose a layer-adapted fusion (LAF) model, called Qifusion-Net, which does not require any prior knowledge about the target accent. Based on dynamic chunk strategy, our approach enables streaming decoding and can extract frame-level acoustic feature, facilitating fine-grained information fusion. Experiment results demonstrate that our proposed methods outperform the baseline with relative reductions of 22.1$\%$ and 17.2$\%$ in character error rate (CER) across multi accent test datasets on KeSpeech and MagicData-RMAC.