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Real-time spectrum estimation–based dual-channel speech-enhancement algorithm for cochlear implant

机译:基于实时频谱估计的双通道人工耳蜗语音增强算法

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Background Improvement of the cochlear implant (CI) front-end signal acquisition is needed to increase speech recognition in noisy environments. To suppress the directional noise, we introduce a speech-enhancement algorithm based on microphone array beamforming and spectral estimation. The experimental results indicate that this method is robust to directional mobile noise and strongly enhances the desired speech, thereby improving the performance of CI devices in a noisy environment. Methods The spectrum estimation and the array beamforming methods were combined to suppress the ambient noise. The directivity coefficient was estimated in the noise-only intervals, and was updated to fit for the mobile noise. Results The proposed algorithm was realized in the CI speech strategy. For actual parameters, we use Maxflat filter to obtain fractional sampling points and cepstrum method to differentiate the desired speech frame and the noise frame. The broadband adjustment coefficients were added to compensate the energy loss in the low frequency band. Discussions The approximation of the directivity coefficient is tested and the errors are discussed. We also analyze the algorithm constraint for noise estimation and distortion in CI processing. The performance of the proposed algorithm is analyzed and further be compared with other prevalent methods. Conclusions The hardware platform was constructed for the experiments. The speech-enhancement results showed that our algorithm can suppresses the non-stationary noise with high SNR. Excellent performance of the proposed algorithm was obtained in the speech enhancement experiments and mobile testing. And signal distortion results indicate that this algorithm is robust with high SNR improvement and low speech distortion.
机译:背景技术需要改进耳蜗植入(CI)前端信号的采集,以提高嘈杂环境中的语音识别。为了抑制方向性噪声,我们引入了一种基于麦克风阵列波束形成和频谱估计的语音增强算法。实验结果表明,该方法对定向移动噪声具有鲁棒性,并且可以强烈增强所需的语音,从而提高了CI设备在嘈杂环境中的性能。方法将频谱估计和阵列波束形成方法相结合,以抑制环境噪声。在仅噪声间隔中估计方向性系数,并将其更新以适合移动噪声。结果在CI语音策略中实现了该算法。对于实际参数,我们使用Maxflat滤波器获取分数采样点,并使用倒频谱方法来区分所需的语音帧和噪声帧。添加了宽带调整系数以补偿低频带中的能量损耗。讨论测试了方向性​​系数的近似值,并讨论了误差。我们还分析了CI处理中噪声估计和失真的算法约束。分析了所提出算法的性能,并将其与其他流行方法进行了比较。结论构建了用于实验的硬件平台。语音增强结果表明,我们的算法可以抑制高信噪比的非平稳噪声。在语音增强实验和移动测试中,该算法均具有良好的性能。信号失真结果表明该算法鲁棒性强,信噪比高,语音失真小。

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