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arxiv: 2407.09259 · v1 · pith:W7TMXXQWnew · submitted 2024-07-12 · 📡 eess.SP · cs.SD· eess.AS

Informed FastICA: Semi-Blind Minimum Variance Distortionless Beamformer

classification 📡 eess.SP cs.SDeess.AS
keywords algorithmextractionfasticabeamformerconstraintcovariancedistortionlessfastiva
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Non-Gaussianity-based Independent Vector Extraction leads to the famous one-unit FastICA/FastIVA algorithm when the likelihood function is optimized using an approximate Newton-Raphson algorithm under the orthogonality constraint. In this paper, we replace the constraint with the analytic form of the minimum variance distortionless beamformer (MVDR), by which a semi-blind variant of FastICA/FastIVA is obtained. The side information here is provided by a weighted covariance matrix replacing the noise covariance matrix, the estimation of which is a frequent goal of neural beamformers. The algorithm thus provides an intuitive connection between model-based blind extraction and learning-based extraction. The algorithm is tested in simulations and speaker ID-guided speaker extraction, showing fast convergence and promising performance.

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