Department of Otorhinolaryngology - Head & Neck Surgery, 4501Leiden University Medical Center, Leiden, The Netherlands.
Leiden Institute for Brain and Cognition, Leiden, The Netherlands.
Trends Hear. 2022 Jan-Dec;26:23312165221112762. doi: 10.1177/23312165221112762.
We have investigated the effectiveness of three noise-reduction algorithms, namely an adaptive monaural beamformer (MB), a fixed binaural beamformer (BB), and a single-microphone stationary-noise reduction algorithm (SNRA) by assessing the speech reception threshold (SRT) in a group of 15 bimodal cochlear implant users. Speech was presented frontally towards the listener and background noise was established as a homogeneous field of long-term speech-spectrum-shaped (LTSS) noise or 8-talker babble. We pursued four research questions, namely: whether the benefits of beamforming on the SRT differ between LTSS noise and 8-talker babble; whether BB is more effective than MB; whether SNRA improves the SRT in LTSS noise; and whether the SRT benefits of MB and BB are comparable to their improvement of the signal-to-noise ratio (SNR). The results showed that MB and BB significantly improved SRTs by an average of 2.6 dB and 2.9 dB, respectively. These benefits did not statistically differ between noise types or between the two beamformers. By contrast, physical SNR improvements obtained with a manikin revealed substantially greater benefits of BB (6.6 dB) than MB (3.3 dB). SNRA did not significantly affect SRTs per se in omnidirectional microphone settings, nor in combination with MB and BB. We conclude that in the group of bimodal listeners tested, BB had no additional benefits on speech recognition over MB in homogeneous noise, despite the finding that BB had a substantial larger benefit on the SNR than MB. SNRA did not improve speech recognition.
我们通过评估 15 名双耳模式人工耳蜗使用者的言语接受阈(SRT),研究了三种降噪算法的效果,即自适应单耳声束形成器(MB)、固定双耳声束形成器(BB)和单麦克风固定噪声降低算法(SNRA)。言语信号从前向朝向聆听者呈现,背景噪声设定为均匀场的长期言语频谱形(LTSS)噪声或 8 个说话者的背景噪声。我们提出了四个研究问题,即:声束形成对 LTSS 噪声和 8 个说话者背景噪声的 SRT 影响是否不同;BB 是否比 MB 更有效;SNRA 是否能改善 LTSS 噪声中的 SRT;以及 MB 和 BB 的 SRT 改善是否与 SNR 的改善相当。结果表明,MB 和 BB 分别平均提高了 2.6dB 和 2.9dB 的 SRT。这些益处在噪声类型之间或两种声束形成器之间没有统计学差异。相比之下,使用人工模型获得的物理 SNR 改善表明,BB 的益处(6.6dB)明显大于 MB(3.3dB)。在全向麦克风设置中,SNRA 本身对 SRT 没有显著影响,与 MB 和 BB 结合使用也没有显著影响。我们得出结论,在测试的双耳模式聆听者群体中,BB 在同质噪声中对言语识别的增益没有 MB 大,尽管发现 BB 对 SNR 的增益明显大于 MB。SNRA 并不能提高言语识别。