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Development of a Sound Coding Strategy based on a Deep Recurrent Neural Network for Monaural Source Separation in Cochlear Implants

机译:基于深度递归神经网络的声音编码策略的开发,用于人工耳蜗的单声道分离

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The aim of this study is to investigate whether a source separation algorithm based on a deep recurrent neural network (DRNN) can provide a speech perception benefit for cochlear implant users when speech signals are mixed with another competing voice. The DRNN is based on an existing architecture that is used in combination with an extra masking layer for optimization. The approach has been evaluated using the HSM sentence test (male voice) mixed with a competing voice (female voice) for a monaural speech separation task. Two DRNNs with two levels of complexity have been used. The algorithms have been evaluated in 8 normal hearing listeners using a Vocoder and in 3 CI users. Both DRNNs show a large and significant improvement in speech intelligibility using Vocoded speech. Preliminary results in 3 CI users seem to confirm the improvement observed using Vocoded simulations.
机译:这项研究的目的是调查基于深度递归神经网络(DRNN)的源分离算法是否可以在语音信号与其他竞争性语音混合时为人工耳蜗用户提供语音感知优势。 DRNN基于现有架构,该架构与额外的屏蔽层结合使用以进行优化。该方法已通过将HSM句子测试(男性语音)与竞争性语音(女性语音)混合用于单声道语音分离任务进行了评估。已经使用了具有两个复杂度级别的两个DRNN。该算法已在8位使用Vocoder的普通听力听者和3位CI用户中进行了评估。两种DRNN都显示了使用Vocoded语音的语音清晰度方面的重大改进。 3位CI用户的初步结果似乎证实了使用Vocoded模拟所观察到的改进。

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