Comparing Bayesian Models for Multisensory Cue Combination Without Mandatory Integration

Abstract

Bayesian models of multisensory perception traditionally address the problem of estimating an underlying variable that is assumed to be the cause of the two sen- sory signals. The brain, however, has to solve a more general problem: it also has to establish which signals come from the same source and should be integrated, and which ones do not and should be segregated. In the last couple of years, a few models have been proposed to solve this problem in a Bayesian fashion. One of these has the strength that it formalizes the causal structure of sensory signals. We first compare these models on a formal level. Furthermore, we conduct a psy- chophysics experiment to test human performance in an auditory-visual spatial localization task in which integration is not mandatory. We find that the causal Bayesian inference model accounts for the data better than other models. Keywords: causal inference, Bayesian methods, visual perception.

Cite

Text

Beierholm et al. "Comparing Bayesian Models for Multisensory Cue Combination Without Mandatory Integration." Neural Information Processing Systems, 2007.

Markdown

[Beierholm et al. "Comparing Bayesian Models for Multisensory Cue Combination Without Mandatory Integration." Neural Information Processing Systems, 2007.](https://mlanthology.org/neurips/2007/beierholm2007neurips-comparing/)

BibTeX

@inproceedings{beierholm2007neurips-comparing,
  title     = {{Comparing Bayesian Models for Multisensory Cue Combination Without Mandatory Integration}},
  author    = {Beierholm, Ulrik and Shams, Ladan and Ma, Wei J. and Koerding, Konrad},
  booktitle = {Neural Information Processing Systems},
  year      = {2007},
  pages     = {81-88},
  url       = {https://mlanthology.org/neurips/2007/beierholm2007neurips-comparing/}
}