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

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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 topdown 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.

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APA

Wang, J., Lam, M. W. Y., Su, D., & Yu, D. (2021). Tune-In: Training Under Negative Environments with Interference for Attention Networks Simulating Cocktail Party Effect. In 35th AAAI Conference on Artificial Intelligence, AAAI 2021 (Vol. 16, pp. 13961–13969). Association for the Advancement of Artificial Intelligence. https://doi.org/10.1609/aaai.v35i16.17644

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