08.02.2013 Views

Bernal S D_2010.pdf - University of Plymouth

Bernal S D_2010.pdf - University of Plymouth

Bernal S D_2010.pdf - University of Plymouth

SHOW MORE
SHOW LESS

Create successful ePaper yourself

Turn your PDF publications into a flip-book with our unique Google optimized e-Paper software.

Pougei. A., Dayan. P. & Zemel. R. S. (2(X)3), 'Inference and compulation with population<br />

cod&fi', Annual Review <strong>of</strong> Neuroscience 26, 381-410.<br />

Quiroga, Q,. Reddy. L.. Kreiman, G,. Koch. C. & Fried. I. (2005). invariant visual representa­<br />

tion by .single neurons in ihe human brain", A'aiur*'435(7045), 1102-1107.<br />

Raizada, R. D. S. & Grossherg, S. (2{X)I). 'Contexl-sensiiive binding by ihe laminar circuits<br />

<strong>of</strong> vl und v2: A unified model <strong>of</strong> perceptual grouping, attention, and orienlation contrast'.<br />

Visual Cognition 8(3). 431 - 466.<br />

Raizada, R. D. S. & Grossberg, S. (2003), 'Towards a theory <strong>of</strong> the laminar archileclure <strong>of</strong><br />

cerebral cortex: computational clues from the visual sy.stem'. Cerebral Cortex 13(1), 100-<br />

113.<br />

Ramsden, B. M.. Hung, C. P. & Roe, A. W. (2001), 'Real and illusory contour processing in<br />

area vl <strong>of</strong> theprimale: a cortical balancing act', Cereb. Cortex 11(7), 648-665.<br />

Rao. R, P. (2005). Hierarchical bayesian inference in networks <strong>of</strong> spiking neurons, in 'Advances<br />

in NIPS'. Vol. 17, Vancouver, British Columbia, Canada.<br />

Rao, R. P. N. (1999), 'An optimal estimation approach to visual perception and learning'. Vision<br />

Research i9(]\). 1963-1989.<br />

Rao. R, P. N. (2004), 'Bayesian compulation in recurrent neural circuits'. Neural Compulation<br />

16(1), 1-38.<br />

Rao, R. i^. N. (2006). Neural models <strong>of</strong> bayesian belief propagation, in K. Doya, ed., 'Bayesian<br />

brain: Probabilistic approaches to neural coding', MIT Press, pp. 239-268.<br />

Rao. R. P.N. & Ballard, D. (2005), Probabilislic mtxlels <strong>of</strong> allention based on iconic representa­<br />

tions and predictive coding, in 1.. Ilti, G. Rees & J. Tsotsos. eds. 'Neurobiology <strong>of</strong> Attention',<br />

Academic Press.<br />

Rao. R. P. N. & Ballard, D. H. (1997), 'Dynamic model <strong>of</strong> visual recognition predicts neural<br />

response properties in the visual cortex'. Neural Computation 9(4), 721-763.<br />

Rao, R. P. N. & Ballard, D. H. (1999), 'Predictive coding in the visual codex: a functional<br />

interpretalion <strong>of</strong> some extra-classical receptive-field effects'. Nature Neuroxcience 2(1), 79-<br />

87.<br />

Rauschenberger. R., Liu, T.. Slotnick, S. D. & Yanlis, S. (2006). 'Temporally unfolding neural<br />

representation <strong>of</strong> pictorial occlusion', Psychol<strong>of</strong>iicai Svienve 17(4), 358-364.<br />

Reddy, L., Tsuchiya. N. & Serre. T. (2010), 'Reading the mind's eye: Decoding category infor­<br />

mation during mental imagery'. Neurolmage 50(2), 818-825.<br />

281

Hooray! Your file is uploaded and ready to be published.

Saved successfully!

Ooh no, something went wrong!