SpeechNet: A Universal Modularized Model for Speech Processing Tasks.

2021 
There is a wide variety of speech processing tasks. For different tasks, model networks are usually designed and tuned separately. This paper proposes a universal modularized model, SpeechNet, which contains the five basic modules for speech processing. The concatenation of modules solves a variety of speech processing tasks. We select five important and common tasks in the experiments that use all of these five modules altogether. Specifically, in each trial, we jointly train a subset of all speech tasks under multi-task setting, with all modules shared. Then we can observe whether one task can benefit another during training. SpeechNet is modularized and flexible for incorporating more modules, tasks, or training approaches in the future. We will release the code and experimental settings to facilitate the research of modularized universal models or multi-task learning of speech processing tasks.
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