A deep learning based noise reduction approach to improve speech intelligibility for cochlear implant recipients in the presence of competing speech noise

This paper presents the clinical results of the application of a deep-learning-based noise reduction (NR) approach to improve speech intelligibility for cochlear implant (CI) recipients in the presence of competing speech noise. The deep denoising autoencoder (DDAE) model was used as a representativ...

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Published inAPSIPA ASC 2017 : proceedings, ninth Asia-Pacific Signal and Information Processing Association Annual Summit and Conference : 12-15 December 2017, Kuala Lumpur, Malaysia pp. 808 - 812
Main Authors Syu-Siang Wang, Yu Tsao, Wang, Hsiao-Lan Sharon, Ying-Hui Lai, Li, Lieber Po-Hung
Format Conference Proceeding
LanguageEnglish
Published IEEE 01.12.2017
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Abstract This paper presents the clinical results of the application of a deep-learning-based noise reduction (NR) approach to improve speech intelligibility for cochlear implant (CI) recipients in the presence of competing speech noise. The deep denoising autoencoder (DDAE) model was used as a representative deep-learning-based NR model to reduce the noise components from the noisy input. The enhanced speech was subsequently played to six Mandarin- speaking CI recipients to perform recognition tests. All the subjects used their own clinical speech processors during testing. Two traditional NR approaches were also implemented to test the performance for a comparison. The Taiwan Mandarin version of the hearing in noise test (TMHINT) sentences were adopted and further corrupted by competing two talker speech noise at signal-to-noise ratio (SNR) levels of 0 and 5 dB. The experimental results showed that the DDAE NR approach can yield higher intelligibility scores than the two classical NR techniques in the presence of competing speech. The results of qualitative analysis further showed that the DDAE NR approach notably reduced the envelope distortions. The good results also suggest that the proposed DDAE NR approach can combine well with the existing CI processors to overcome the issue of degradation of speech perception, which is caused by competing speech noise.
AbstractList This paper presents the clinical results of the application of a deep-learning-based noise reduction (NR) approach to improve speech intelligibility for cochlear implant (CI) recipients in the presence of competing speech noise. The deep denoising autoencoder (DDAE) model was used as a representative deep-learning-based NR model to reduce the noise components from the noisy input. The enhanced speech was subsequently played to six Mandarin- speaking CI recipients to perform recognition tests. All the subjects used their own clinical speech processors during testing. Two traditional NR approaches were also implemented to test the performance for a comparison. The Taiwan Mandarin version of the hearing in noise test (TMHINT) sentences were adopted and further corrupted by competing two talker speech noise at signal-to-noise ratio (SNR) levels of 0 and 5 dB. The experimental results showed that the DDAE NR approach can yield higher intelligibility scores than the two classical NR techniques in the presence of competing speech. The results of qualitative analysis further showed that the DDAE NR approach notably reduced the envelope distortions. The good results also suggest that the proposed DDAE NR approach can combine well with the existing CI processors to overcome the issue of degradation of speech perception, which is caused by competing speech noise.
Author Li, Lieber Po-Hung
Yu Tsao
Wang, Hsiao-Lan Sharon
Ying-Hui Lai
Syu-Siang Wang
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  surname: Ying-Hui Lai
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  givenname: Lieber Po-Hung
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  fullname: Li, Lieber Po-Hung
  email: lieber.chgh@gmail.com
  organization: Dept. of Otolaryngology, Cheng Hsin Gen. Hosp., Taipei, Taiwan
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Snippet This paper presents the clinical results of the application of a deep-learning-based noise reduction (NR) approach to improve speech intelligibility for...
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StartPage 808
SubjectTerms Auditory system
Conferences
Speech
Speech enhancement
Speech recognition
Title A deep learning based noise reduction approach to improve speech intelligibility for cochlear implant recipients in the presence of competing speech noise
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