Rakesh Sengupta, Ph.D

Affiliations: 
2015- York University, Toronto, Ontario, Canada 
Area:
Visual working memory, Enumeration, Visual Attention, EEG based Brain-computer Interfaces
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"Rakesh Sengupta"
Mean distance: 15.06 (cluster 29)
 
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Publications

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Sengupta R, Abid O, Bachoo A, et al. (2017) Attentional blink as a product of attentional control signals: A computational investigation Journal of Vision. 17: 1197
Wloka C, Yoo S, Sengupta R, et al. (2017) The Interaction of Target-Distractor Similarity and Visual Search Efficiency for Basic Features Journal of Vision. 17: 1130
Sengupta R, Bapiraju S, Melcher D. (2016) Big and small numbers: Empirical support for a single, flexible mechanism for numerosity perception. Attention, Perception & Psychophysics
Wloka C, Yoo S, Sengupta R, et al. (2016) Psychophysical Evaluation of Saliency Algorithms Journal of Vision. 16: 1291
Sengupta R, Rhinou P, Melcher D, et al. (2015) The influence of pre-stimulus brain oscillations on the visual sense of number: an MEG study. Journal of Vision. 15: 906
Sengupta R, Surampudi BR, Melcher D. (2014) A visual sense of number emerges from the dynamics of a recurrent on-center off-surround neural network. Brain Research. 1582: 114-24
Knops A, Piazza M, Sengupta R, et al. (2014) A shared, flexible neural map architecture reflects capacity limits in both visual short-term memory and enumeration. The Journal of Neuroscience : the Official Journal of the Society For Neuroscience. 34: 9857-66
Sengupta R, Basu P, Melcher D, et al. (2014) Accounting for subjective time expansion based on a decision, rather than perceptual, mechanism F1000research. 14: 1150-1150
Sengupta R, Bapiraju S, Melcher D. (2013) Subitizing and estimation emerge from a computational saliency map model F1000research. 4
Sengupta R, Bapiraju S, Melcher DP. (2013) Subitizing and estimation emerge from a computational saliency map model of object individuation Journal of Vision. 13: 235-235
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