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Improving Noise Robust Automatic Speech Recognition with Single-Channel Time-Domain Enhancement Network

Keisuke Kinoshita, Tsubasa Ochiai, Marc Delcroix, Tomohiro Nakatani

202098 citationsDOI

Abstract

With the advent of deep learning, research on noise-robust automatic speech recognition (ASR) has progressed rapidly. However, ASR performance in noisy conditions of single-channel systems remains unsatisfactory. Indeed, most single-channel speech enhancement (SE) methods (denoising) have brought only limited performance gains over state-of-the-art ASR back-end trained on multi-condition training data. Recently, there has been much research on neural network-based SE methods working in the time-domain showing levels of performance never attained before. However, it has not been established whether the high enhancement performance achieved by such time-domain approaches could be translated into ASR. In this paper, we show that a single-channel time-domain denoising approach can significantly improve ASR performance, providing more than 30 % relative word error reduction over a strong ASR back-end on the real evaluation data of the single-channel track of the CHiME-4 dataset. These positive results demonstrate that single-channel noise reduction can still improve ASR performance, which should open the door to more research in that direction.

Topics & Concepts

Computer scienceNoise reductionSpeech recognitionNoise (video)Time domainChannel (broadcasting)Speech enhancementReduction (mathematics)Artificial neural networkNoise measurementDomain (mathematical analysis)Artificial intelligencePerformance improvementWord (group theory)Training setPattern recognition (psychology)TelecommunicationsEngineeringComputer visionMathematicsGeometryImage (mathematics)Mathematical analysisOperations managementSpeech and Audio ProcessingSpeech Recognition and SynthesisMusic and Audio Processing
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