Larigaldie Nathanael, Yates Tim, Beierholm Ulrik R
Durham University, Durham, United Kingdom.
Aarhus University, Aarhus, Denmark.
PLoS Comput Biol. 2025 Jul 11;21(7):e1013189. doi: 10.1371/journal.pcbi.1013189. eCollection 2025 Jul.
Perception is dependent on the ability to separate stimuli from different objects and causes in order to perform inference and further processing. We have models of how the human brain can perform such causal inference for simple binary stimuli (e.g., auditory and visual), but the complexity of the models increases dramatically with more than two stimuli. To characterize human perception with more complex stimuli, we developed a Bayesian inference model that takes into account a potentially unlimited number of stimulus sources: it is general enough to factor in any discrete sequential cues from any modality. Because the model employs a non-parametric prior, increased signal complexity does not necessitate the addition of more parameters. The model not only predicts the number of possible sources, but also specifies the source with which each signal is associated. As a test case, we demonstrate that such a model can explain several phenomena in the auditory stream perception literature, that it provides an excellent fit to experimental data, and that it makes novel predictions that we experimentally confirm. These findings have implications not just for human auditory temporal perception, but for a wide range of perceptual phenomena across unisensory and multisensory stimuli.
感知依赖于将来自不同物体和原因的刺激区分开来以进行推理和进一步处理的能力。我们有关于人类大脑如何对简单二元刺激(如听觉和视觉)进行这种因果推理的模型,但随着刺激超过两种,模型的复杂性会急剧增加。为了用更复杂的刺激来表征人类感知,我们开发了一种贝叶斯推理模型,该模型考虑了潜在无限数量的刺激源:它具有足够的通用性,可以纳入来自任何模态的任何离散序列线索。由于该模型采用非参数先验,信号复杂性的增加并不需要添加更多参数。该模型不仅可以预测可能的源的数量,还能指定每个信号所关联的源。作为一个测试案例,我们证明这样的模型可以解释听觉流感知文献中的几种现象,它能很好地拟合实验数据,并且能做出我们通过实验证实的新预测。这些发现不仅对人类听觉时间感知有影响,而且对单感官和多感官刺激的广泛感知现象都有影响。