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Fully convolutional network (FCN) model to extract clear speech signals on non-stationary noises of human conversations for cochlear implants

机译:完全卷积网络(FCN)模型提取清晰的语音信号对人类对话的非静止噪声进行耳蜗植入物

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Cochlear implant (CI) electronically stimulates the nerve to help those with severe hearing lost. However, under noisy backgrounds, speech perception tasks have remained difficult for CI users. Therefore, speech enhancement (SE) is a critical component to improve speech perception examining through different noise scenarios. In this study, we developed the fully convolutional network (FCN) model to extract clear speech signals on non-stationary noises of human conversations in the background, and further compare the model's performance with previously developed log power spectrum (LPS) based Deep neural network (DNN) model's performance by conducting hearing test of enhanced speech which simulated in CI.
机译:耳蜗植入物(CI)电子刺激神经以帮助严重听力丢失的神经。然而,在嘈杂的背景下,语音感知任务对CI用户仍然困难。因此,语音增强(SE)是通过不同噪声场景改善语音感知检查的关键组成部分。在这项研究中,我们开发了完全卷积的网络(FCN)模型,以提取在背景中的人类对话的非稳定性噪声上提取清晰的语音信号,并进一步比较模型的性能与先前开发的基于日志功率频谱(LPS)的深神经网络(DNN)模型通过对CI中模拟的增强语音进行听力测试进行模型的性能。

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