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      Lightweight Speech Enhancement in Unseen Noisy and Reverberant Conditions using KISS-GEV Beamforming

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          Abstract

          This paper introduces a new method referred to as KISS-GEV (for Keep It Super Simple Generalized eigenvalue) beamforming. While GEV beamforming usually relies on deep neural network for estimating target and noise time-frequency masks, this method uses a signal processing approach based on the direction of arrival (DoA) of the target. This considerably reduces the amount of computations involved at test time, and works for speech enhancement in unseen conditions as there is no need to train a neural network with noisy speech. The proposed method can also be used to separate speech from a mixture, provided the speech sources come from different directions. Results also show that the proposed method uses the same minimal DoA assumption as Delay-and-Sum beamforming, yet outperforms this traditional approach.

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          Author and article information

          Journal
          06 October 2021
          Article
          2110.03103
          faf95794-c422-445c-b67c-e3b72fed5fee

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Custom metadata
          eess.AS cs.SD eess.SP

          Graphics & Multimedia design,Electrical engineering
          Graphics & Multimedia design, Electrical engineering

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