Litcius/Paper detail

Efficient Transformer-based Speech Enhancement Using Long Frames and STFT Magnitudes

Danilo de Oliveira, Tal Peer, Timo Gerkmann

2022Interspeech 202220 citationsDOI

Abstract

The SepFormer architecture shows very good results in speech separation. Like other learned-encoder models, it uses short frames, as they have been shown to obtain better performance in these cases. This results in a large number of frames at the input, which is problematic; since the SepFormer is transformer-based, its computational complexity drastically increases with longer sequences. In this paper, we employ the SepFormer in a speech enhancement task and show that by replacing the learned-encoder features with a magnitude short-time Fourier transform (STFT) representation, we can use long frames without compromising perceptual enhancement performance. We obtained equivalent quality and intelligibility evaluation scores while reducing the number of operations by a factor of approximately 8 for a 10-second utterance.

Topics & Concepts

Short-time Fourier transformComputer scienceSpeech recognitionUtteranceEncoderIntelligibility (philosophy)Speech enhancementTransformerSpectrogramComputational complexity theoryArtificial intelligenceFourier transformPattern recognition (psychology)AlgorithmMathematicsFourier analysisEngineeringNoise reductionPhilosophyVoltageElectrical engineeringEpistemologyOperating systemMathematical analysisSpeech and Audio ProcessingSpeech Recognition and SynthesisAdvanced Adaptive Filtering Techniques