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A Study of Joint Effect on Denoising Techniques and Visual Cues to Improve Speech Intelligibility in Cochlear Implant Simulation

Rung-Yu Tseng, Tao-Wei Wang, Szu‐Wei Fu, Chia‐Ying Lee, Yu Tsao

2020IEEE Transactions on Cognitive and Developmental Systems22 citationsDOIOpen Access PDF

Abstract

Speech perception is the key to verbal communication. For people with hearing loss, the capability to recognize speech is restricted, particularly in a noisy environment or the situations without visual cues, such as lip-reading unavailable via phone call. This study aimed to understand the improvement of vocoded speech intelligibility in cochlear implant (CI) simulation through two potential methods: 1) speech enhancement (SE) and 2) audiovisual integration. A fully convolutional neural network (FCN) using an intelligibility-oriented objective function was recently proposed and proven to effectively facilitate the speech intelligibility as an advanced denoising SE approach. Furthermore, audiovisual integration is reported to supply better speech comprehension compared to audio-only information. An experiment was designed to test speech intelligibility using tone-vocoded speech in CI simulation with a group of normal-hearing listeners. The experimental results confirmed the effectiveness of the FCN-based denoising SE and audiovisual integration on vocoded speech. Also, it positively recommended that these two methods could become a blended feature in a CI processor to improve the speech intelligibility for CI users under noisy conditions.

Topics & Concepts

Computer scienceIntelligibility (philosophy)Speech recognitionCochlear implantSpeech perceptionNoise reductionPerceptionAudiologyArtificial intelligencePsychologyPhilosophyNeuroscienceMedicineEpistemologyHearing Loss and RehabilitationSpeech and Audio ProcessingAcoustic Wave Phenomena Research
A Study of Joint Effect on Denoising Techniques and Visual Cues to Improve Speech Intelligibility in Cochlear Implant Simulation | Litcius