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Insights Into Deep Non-Linear Filters for Improved Multi-Channel Speech Enhancement

Kristina Tesch, Timo Gerkmann

2022IEEE/ACM Transactions on Audio Speech and Language Processing71 citationsDOI

Abstract

The key advantage of using multiple microphones for speech enhancement is that spatial filtering can be used to complement the tempo-spectral processing. In a traditional setting, linear spatial filtering (beamforming) and single-channel post-filtering are commonly performed separately. In contrast, there is a trend towards employing (DNNs) to learn a joint spatial and tempo-spectral non-linear filter, which means that the restriction of a linear processing model and that of a separate processing of spatial and tempo-spectral information can potentially be overcome. However, the internal mechanisms that lead to good performance of such data-driven filters for multi-channel speech enhancement are not well understood. Therefore, in this work, we analyse the properties of a non-linear spatial filter realized by a DNN as well as its interdependency with temporal and spectral processing by carefully controlling the information sources (spatial, spectral, and temporal) available to the network. We confirm the superiority of a non-linear spatial processing model, which outperforms an oracle linear spatial filter in a challenging speaker extraction scenario for a low number of microphones by 0.24 POLQA score. Our analyses reveal that in particular spectral information should be processed jointly with spatial information as this increases the spatial selectivity of the filter. Our systematic evaluation then leads to a simple network architecture, that outperforms state-of-the-art network architectures on a speaker extraction task by 0.22 POLQA score and by 0.32 POLQA score on the CHiME3 data.

Topics & Concepts

Computer scienceSpatial filterSpatial analysisFilter (signal processing)Linear filterSpeech recognitionChannel (broadcasting)BeamformingSpeech enhancementArtificial intelligenceComplement (music)Pattern recognition (psychology)MathematicsComputer visionTelecommunicationsChemistryComplementationStatisticsPhenotypeBiochemistryGeneSpeech and Audio ProcessingAdvanced Adaptive Filtering TechniquesHearing Loss and Rehabilitation