Hu Yi, Loizou Philipos C
Department of Electrical Engineering, University of Texas-Dallas, Richardson, Texas 75080, USA.
J Acoust Soc Am. 2010 Jun;127(6):3689-95. doi: 10.1121/1.3365256.
Attempts to develop noise-suppression algorithms that can significantly improve speech intelligibility in noise by cochlear implant (CI) users have met with limited success. This is partly because algorithms were sought that would work equally well in all listening situations. Accomplishing this has been quite challenging given the variability in the temporal/spectral characteristics of real-world maskers. A different approach is taken in the present study focused on the development of environment-specific noise suppression algorithms. The proposed algorithm selects a subset of the envelope amplitudes for stimulation based on the signal-to-noise ratio (SNR) of each channel. Binary classifiers, trained using data collected from a particular noisy environment, are first used to classify the mixture envelopes of each channel as either target-dominated (SNR>or=0 dB) or masker-dominated (SNR<0 dB). Only target-dominated channels are subsequently selected for stimulation. Results with CI listeners indicated substantial improvements (by nearly 44 percentage points at 5 dB SNR) in intelligibility with the proposed algorithm when tested with sentences embedded in three real-world maskers. The present study demonstrated that the environment-specific approach to noise reduction has the potential to restore speech intelligibility in noise to a level near to that attained in quiet.
试图开发能显著提高人工耳蜗(CI)使用者在噪声环境中语音清晰度的噪声抑制算法,成效有限。部分原因在于,人们寻求的算法要在所有聆听环境中都能同样良好地发挥作用。鉴于现实世界中掩蔽声的时间/频谱特性存在变异性,要做到这一点颇具挑战性。本研究采用了一种不同的方法,专注于开发针对特定环境的噪声抑制算法。所提出的算法根据每个通道的信噪比(SNR)选择用于刺激的包络幅度子集。首先使用从特定噪声环境收集的数据训练的二元分类器,将每个通道的混合包络分类为目标主导(SNR≥0 dB)或掩蔽主导(SNR<0 dB)。随后仅选择目标主导的通道进行刺激。对人工耳蜗聆听者的测试结果表明,当用嵌入三种现实世界掩蔽声中的句子进行测试时,所提出的算法在清晰度方面有显著提高(在5 dB SNR时提高近44个百分点)。本研究表明,针对特定环境的降噪方法有可能将噪声环境中的语音清晰度恢复到接近安静环境中的水平。