Deep learning based speaker separation and dereverberation can generalize across different languages to improve intelligibility
Autor: | Hassan Taherian, Divya S. Krishnagiri, Masood Delfarah, DeLiang Wang, Victoria A. Sevich, Eric M. Johnson, Eric W. Healy |
---|---|
Jazyk: | angličtina |
Rok vydání: | 2021 |
Předmět: |
Reverberation
Acoustics and Ultrasonics Artificial neural network business.industry Generalization Computer science Speech recognition Deep learning Speech Intelligibility Speech corpus Reverberation room Intelligibility (communication) Psychological and Physiological Acoustics Deep Learning Arts and Humanities (miscellaneous) Computational auditory scene analysis otorhinolaryngologic diseases Speech Perception Humans Artificial intelligence business Hearing Loss Perceptual Masking Language |
Zdroj: | J Acoust Soc Am |
Popis: | The practical efficacy of deep learning based speaker separation and/or dereverberation hinges on its ability to generalize to conditions not employed during neural network training. The current study was designed to assess the ability to generalize across extremely different training versus test environments. Training and testing were performed using different languages having no known common ancestry and correspondingly large linguistic differences—English for training and Mandarin for testing. Additional generalizations included untrained speech corpus/recording channel, target-to-interferer energy ratios, reverberation room impulse responses, and test talkers. A deep computational auditory scene analysis algorithm, employing complex time-frequency masking to estimate both magnitude and phase, was used to segregate two concurrent talkers and simultaneously remove large amounts of room reverberation to increase the intelligibility of a target talker. Significant intelligibility improvements were observed for the normal-hearing listeners in every condition. Benefit averaged 43.5% points across conditions and was comparable to that obtained when training and testing were performed both in English. Benefit is projected to be considerably larger for individuals with hearing impairment. It is concluded that a properly designed and trained deep speaker separation/dereverberation network can be capable of generalization across vastly different acoustic environments that include different languages. |
Databáze: | OpenAIRE |
Externí odkaz: |