Smith A.M. Alhacen's Theory of Visual Perception: A Critical Edition, with English Translation and Commentary, of the First Three Books of Alhacen's De aspectibus, the Medieval Latin Version of Ibn al-Haytham's Kitab al-Manazir. American Philosophical Society , View in Article Google Scholar

Helmholtz H.L.F.v. Treatise on Physiological Optics. Thoemmes Press , View in Article Google Scholar

Mach E. Contributions to the Analysis of the Sensations. Open Court Publishing , View in Article Google Scholar

Peterson W.W.

et al. The theory of signal detectability. Transactions IRE Profession Group on Information Theory, PGIT-4. ( ) View in Article Google Scholar

Green D.M.

Swets J.A. Signal Detection Theory and Psychophysics. John Wiley & Sons , View in Article Google Scholar

Knill D.C. Richards W. Perception as Bayesian Inference. Cambridge University Press , View in Article Crossref

Google Scholar

van Beers R.J.

et al. How humans combine simultaneous proprioceptive and visual position information. Exp. Brain Res. 111 : 253-261 View in Article PubMed

Crossref

Google Scholar

Wald A.

Wolfowitz J. Optimum character of the sequential probability ratio test. Ann. Math. Stat. 19 : 326-339 View in Article Crossref

Google Scholar

Vul E.

et al. Explaining human multiple object tracking as resource-constrained approximate inference in a dynamic probabilistic model. Neural Inf. Proc. Syst. 22 : 1955 View in Article Google Scholar

Sato Y.

et al. Bayesian inference explains perception of unity and ventriloquism aftereffect: identification of common sources of audiovisual stimuli. Neural Comput. 19 : 3335-3355 View in Article Scopus (107)

PubMed

Crossref

Google Scholar

De Vries H.D. The quantum character of light and its bearing upon threshold of vision, the differential sensitivity and visual acuity of the eye. Physica. 10 : 553-564 View in Article Scopus (218)

Crossref

Google Scholar

Whiteley L.

Sahani M. Implicit knowledge of visual uncertainty guides decisions with asymmetric outcomes. J. Vis. 8 : 1-15 View in Article PubMed

Google Scholar

Gao J.T.

et al. Dynamic integration of reward and stimulus information in perceptual decision making. PLoS ONE. 6 : e16749 View in Article Scopus (39)

Crossref

Google Scholar

Huk A.C.

Shadlen M.N. Neural activity in macaque parietal cortex reflects temporal integration of visual motion signals during perceptual decision making. J. Neurosci. 25 : 10420-10436 View in Article Scopus (347)

PubMed

Crossref

Google Scholar

Baldassi S.

Verghese P. Comparing integration rules in visual search. J. Vis. 2 : 559-570 View in Article PubMed

Google Scholar

Eckstein M.P. The lower visual search efficiency for conjunctions is due to noise and not serial attentional processing. Psychol. Sci. 9 : 111-118 View in Article Scopus (175)

Crossref

Google Scholar

Eckstein M.P.

et al. A signal detection model predicts the effects of set size on visual search accuracy for feature, conjunction, triple conjunction, and disjunction displays. Percept. Psychophys. 62 : 425-451 View in Article Scopus (210)

PubMed

Crossref

Google Scholar

Brenner E.

et al. If I saw it, it probably wasn’t far from where I was looking. J. Vis. 8 : 1-10 View in Article PubMed

Google Scholar

Rowland B.

et al. A Bayesian model unifies multisensory spatial localization with the physiological properties of the superior colliculus. Exp. Brain Res. 180 : 153-161 View in Article Scopus (44)

PubMed

Crossref

Google Scholar

Bishop C.M. Pattern Recognition and Machine Learning. Springer , View in Article Google Scholar

Ma W.J.

Huang W. No capacity limit in attentional tracking: Evidence for probabilistic inference under a resource constraint. J. Vis. 9 : 1-30 View in Article Google Scholar

Shaw M.L. Identifying attentional and decision-making components in information processing. in: Nickerson R.S. Attention and Performance. Erlbaum , : 277-296 View in Article Google Scholar

Foldiak P. The ‘ideal homunculus’: statistical inference from neural population responses. in: Eeckman F. Bower J. Computation and Neural Systems. Kluwer Academic Publishers , : 55-60 View in Article Crossref

Google Scholar

Sanger T. Probability density estimation for the interpretation of neural population codes. J. Neurophysiol. 76 : 2790-2793 View in Article PubMed

Google Scholar

Anderson C. Neurobiological computational systems. in: Zurada J.M. Computational Intelligence Imitating Life. IEEE Press , : 213-222 View in Article Google Scholar