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Efficient two-microphone speech enhancement using basic recurrent neural network cell for hearing and hearing aids

机译:使用基本复发性神经网络电池进行高效的双麦克风语音增强用于听力和助听器

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摘要

This work presents a two-microphone speech enhancement (SE) framework based on basic recurrent neural network (RNN) cell. The proposed method operates in real-time, improving the speech quality and intelligibility in noisy environments. The RNN model trained using a simple feature set-real and imaginary parts of the short-time Fourier transform (STFT) are computationally efficient with a minimal input-output processing delay. The proposed algorithm can be used in any stand-alone platform such as a smartphone using its two inbuilt microphones. The detailed operation of the real-time implementation on the smartphone is presented. The developed application works as an assistive tool for hearing aid devices (HADs). Speech quality and intelligibility test results are used to compare the proposed algorithm to existing conventional and neural network-based SE methods. Subjective and objective scores show the superior performance of the developed method over several conventional methods in different noise conditions and low signal to noise ratios (SNRs).
机译:该工作介绍了基于基本复发神经网络(RNN)单元的双麦克风语音增强(SE)框架。该方法实时运行,提高了嘈杂环境中的语音质量和可懂度。使用短时间傅里叶变换(STFT)的简单特征设定实物和虚部进行训练的RNN模型是用最小的输入输出处理延迟计算效率。所提出的算法可用于使用其两个内置麦克风等智能手机等独立平台。提出了智能手机实时实现的详细操作。开发的应用程序作为助听器设备(HAFS)的辅助工具。语音质量和可懂度测试结果用于将所提出的算法与现有的传统和神经网络的SE方法进行比较。主观和客观分数显示出在不同噪声条件下的几种传统方法和低信噪比(SNRS)中的几种传统方法的优越性。

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