Department of Brain and Cognitive Sciences, Massachusetts Institute of Technology, Cambridge, MA 02139.
McGovern Institute, Massachusetts Institute of Technology, Cambridge, MA 02139.
Proc Natl Acad Sci U S A. 2024 Nov 19;121(47):e2408995121. doi: 10.1073/pnas.2408995121. Epub 2024 Nov 15.
Human hearing is robust to noise, but the basis of this robustness is poorly understood. Several lines of evidence are consistent with the idea that the auditory system adapts to sound components that are stable over time, potentially achieving noise robustness by suppressing noise-like signals. Yet background noise often provides behaviorally relevant information about the environment and thus seems unlikely to be completely discarded by the auditory system. Motivated by this observation, we explored whether noise robustness might instead be mediated by internal models of noise structure that could facilitate the separation of background noise from other sounds. We found that detection, recognition, and localization in real-world background noise were better for foreground sounds positioned later in a noise excerpt, with performance improving over the initial second of exposure to a noise. These results are consistent with both adaptation-based and model-based accounts (adaptation increases over time and online noise estimation should benefit from acquiring more samples). However, performance was also robust to interruptions in the background noise and was enhanced for intermittently recurring backgrounds, neither of which would be expected from known forms of adaptation. Additionally, the performance benefit observed for foreground sounds occurring later within a noise excerpt was reduced for recurring noises, suggesting that a noise representation is built up during exposure to a new background noise and then maintained in memory. These findings suggest that noise robustness is supported by internal models-"noise schemas"-that are rapidly estimated, stored over time, and used to estimate other concurrent sounds.
人类听觉对噪声具有很强的鲁棒性,但这种鲁棒性的基础理解得还很差。有几条证据线与这样的观点一致,即听觉系统适应随时间稳定的声音成分,通过抑制类似噪声的信号来实现对噪声的鲁棒性。然而,背景噪声通常提供有关环境的行为相关信息,因此似乎不太可能被听觉系统完全丢弃。受此观察结果的启发,我们探讨了噪声鲁棒性是否可以通过内部噪声结构模型来介导,该模型可以促进从其他声音中分离背景噪声。我们发现,在真实背景噪声中的检测、识别和定位,对于处于噪声摘录稍后位置的前景声音更好,并且在暴露于噪声的最初两秒内性能会提高。这些结果与基于适应和基于模型的解释都一致(随着时间的推移,适应会增加,而在线噪声估计应该从获取更多样本中受益)。然而,性能对背景噪声的中断也具有鲁棒性,并且对间歇性重复的背景声音增强,这两种情况都不会预期从已知的适应形式中产生。此外,对于在噪声摘录中稍后出现的前景声音,观察到的性能优势对于重复出现的噪声减少,这表明在暴露于新的背景噪声期间建立了噪声表示,然后在记忆中保持该表示。这些发现表明,内部模型——“噪声图式”——支持噪声鲁棒性,这些模型可以快速估计、随时间存储并用于估计其他并发声音。