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Tune-In: Training Under Negative Environments with Interference for Attention Networks Simulating Cocktail Party Effect

2021-03-02 04:03:37
Jun Wang, Max W. Y. Lam, Dan Su, Dong Yu

Abstract

We study the cocktail party problem and propose a novel attention network called Tune-In, abbreviated for training under negative environments with interference. It firstly learns two separate spaces of speaker-knowledge and speech-stimuli based on a shared feature space, where a new block structure is designed as the building block for all spaces, and then cooperatively solves different tasks. Between the two spaces, information is cast towards each other via a novel cross- and dual-attention mechanism, mimicking the bottom-up and top-down processes of a human's cocktail party effect. It turns out that substantially discriminative and generalizable speaker representations can be learnt in severely interfered conditions via our self-supervised training. The experimental results verify this seeming paradox. The learnt speaker embedding has superior discriminative power than a standard speaker verification method; meanwhile, Tune-In achieves remarkably better speech separation performances in terms of SI-SNRi and SDRi consistently in all test modes, and especially at lower memory and computational consumption, than state-of-the-art benchmark systems.

Abstract (translated)

URL

https://arxiv.org/abs/2103.01461

PDF

https://arxiv.org/pdf/2103.01461.pdf


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