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

机译:一种基于深度学习的降噪方法,可在存在竞争性语音噪声的情况下提高人工耳蜗植入者的语音清晰度

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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.
机译:本文介绍了基于深度学习的降噪(NR)方法在存在竞争性语音噪声的情况下提高人工耳蜗(CI)接收者语音清晰度的临床结果。深度降噪自动编码器(DDAE)模型用作基于深度学习的代表性NR模型,以减少来自嘈杂输入的噪声分量。随后,对六位说普通话的CI接收者播放了增强的语音,以进行识别测试。所有受试者在测试过程中都使用了自己的临床语音处理器。还实施了两种传统的降噪方法来测试性能以进行比较。采用了台湾普通话版本的噪音测试听力(TMHINT)句子,并且由于信噪比(SNR)级别为0和5 dB的两个讲话者语音噪声相互竞争而进一步恶化。实验结果表明,在存在竞争性语音的情况下,DDAE NR方法比两种经典NR技术可产生更高的清晰度得分。定性分析的结果进一步表明,DDAE NR方法显着降低了包络失真。良好的结果还表明,所提出的DDAE NR方法可以与现有CI处理器很好地结合,以克服由竞争性语音噪声引起的语音感知质量下降的问题。

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