
MT2KD: Towards A General-Purpose Encoder for Speech, Speaker, and Audio Events
Author(s) -
Xiaoyu Yang,
Qiujia Li,
Chao Zhang,
Philip C. Woodland
Publication year - 2025
Publication title -
ieee transactions on audio, speech and language processing
Language(s) - English
Resource type - Magazines
eISSN - 2998-4173
DOI - 10.1109/taslpro.2025.3594300
Subject(s) - signal processing and analysis , computing and processing , fields, waves and electromagnetics
With advances in deep learning, the performance of end-to-end single-task models for speech and audio processing has been constantly improving. However, it is challenging to build a general-purpose model with high performance on multiple tasks, since different speech and audio processing tasks usually require different training data, input features, or model architectures to achieve optimal performance. In this work, MT2KD, a novel two-stage multi-task learning framework is proposed to build a general-purpose speech and audio encoder that jointly performs three fundamental tasks: automatic speech recognition (ASR), audio tagging (AT) and speaker verification (SV). In the first stage, multi-teacher knowledge distillation (KD) is applied to align the feature spaces of three single-task high-performance teacher encoders into a single student encoder using the same unlabelled data. In the second stage, multi-task supervised fine-tuning is carried out by initialising the model from the first stage and training on the separate labelled data of each single task. Experiments demonstrate that the proposed multi-task training pipeline significantly outperforms a baseline model trained with multi-task learning from scratch. The final system achieves good performance on ASR, AT and SV: with less than 4% relative word-error-rate increase on ASR, only 1.9 lower mean averaged precision on AT and 0.23% absolute higher equal error rate on SV compared to the best-performing single-task encoders, using only a total of 66M model parameters.
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