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arxiv: 2307.12134 · v1 · pith:D4DB5HS5 · submitted 2023-07-22 · cs.CL · cs.SD· eess.AS

Modality Confidence Aware Training for Robust End-to-End Spoken Language Understanding

Reviewed by Pithpith:D4DB5HS5open to challenge →

classification cs.CL cs.SDeess.AS
keywords approachsystemstextaudioconfidenceeffectiveend-to-enderrors
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End-to-end (E2E) spoken language understanding (SLU) systems that generate a semantic parse from speech have become more promising recently. This approach uses a single model that utilizes audio and text representations from pre-trained speech recognition models (ASR), and outperforms traditional pipeline SLU systems in on-device streaming scenarios. However, E2E SLU systems still show weakness when text representation quality is low due to ASR transcription errors. To overcome this issue, we propose a novel E2E SLU system that enhances robustness to ASR errors by fusing audio and text representations based on the estimated modality confidence of ASR hypotheses. We introduce two novel techniques: 1) an effective method to encode the quality of ASR hypotheses and 2) an effective approach to integrate them into E2E SLU models. We show accuracy improvements on STOP dataset and share the analysis to demonstrate the effectiveness of our approach.

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  1. Enhancing ASR Performance in the Medical Domain for Dravidian Languages

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    A hybrid confidence-aware ASR training framework with learnable weights reduces Telugu medical WER from 24.3% to 15.8% and Kannada from 31.7% to 25.4%, outperforming standard fine-tuning.