Litcius/Paper detail

Enhancement of Noisy Reverberant Speech Using Polynomial Matrix Eigenvalue Decomposition

Vincent W. Neo, Christine Evers, Patrick A. Naylor

2021IEEE/ACM Transactions on Audio Speech and Language Processing22 citationsDOI

Abstract

Speech enhancement is important for applications such as telecommunications, hearing aids, automatic speech recognition and voice-controlled systems. Enhancement algorithms aim to reduce interfering noise and reverberation while minimizing any speech distortion. In this work for speech enhancement, we propose to use polynomial matrices to model the spatial, spectral and temporal correlations between the speech signals received by a microphone array and polynomial matrix eigenvalue decomposition (PEVD) to decorrelate in space, time and frequency simultaneously. We then propose a blind and unsupervised PEVD-based speech enhancement algorithm. Simulations and informal listening examples involving diverse reverberant and noisy environments have shown that our method can jointly suppress noise and reverberation, thereby achieving speech enhancement without introducing processing artefacts into the enhanced signal.

Topics & Concepts

ReverberationSpeech enhancementSpeech recognitionComputer sciencePolynomialEigenvalues and eigenvectorsNoise (video)Eigendecomposition of a matrixMicrophoneSpeech processingDistortion (music)AlgorithmAcousticsMathematicsNoise reductionArtificial intelligenceTelecommunicationsAmplifierPhysicsMathematical analysisImage (mathematics)Bandwidth (computing)Quantum mechanicsSound pressureSpeech and Audio ProcessingAdvanced Adaptive Filtering TechniquesBlind Source Separation Techniques