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Scott T Steinmetz

Showing results (1-10 of 5) with videos related to

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Frontiers in Neuroscience|September 17, 2024
Accuracy optimized neural networks do not effectively model optic flow tuning in brain area MSTdOliver W Layton, Scott T Steinmetz
Sensors (Basel, Switzerland)|December 17, 2024
ReLU, Sparseness, and the Encoding of Optic Flow in Neural NetworksOliver W Layton, Siyuan Peng, Scott T Steinmetz
Bioinspiration & Biomimetics|May 17, 2022
Estimating curvilinear self-motion from optic flow with a biologically inspired neural systemOliver W Layton, Nathaniel Powell, Scott T Steinmetz, et al.
Journal of Vision|April 2, 2020
Affordance-based versus current-future accounts of choosing whether to pursue or abandon the chase of a moving targetScott T Steinmetz, Oliver W Layton, Nathaniel V Powell, et al.
Frontiers in Computational Neuroscience|April 18, 2022
A Dynamic Efficient Sensory Encoding Approach to Adaptive Tuning in Neural Models of Optic Flow ProcessingScott T Steinmetz, Oliver W Layton, Nathaniel V Powell, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
Frontiers in Neuroscience|September 17, 2024
Accuracy optimized neural networks do not effectively model optic flow tuning in brain area MSTdOliver W Layton, Scott T Steinmetz
Sensors (Basel, Switzerland)|December 17, 2024
ReLU, Sparseness, and the Encoding of Optic Flow in Neural NetworksOliver W Layton, Siyuan Peng, Scott T Steinmetz
Bioinspiration & Biomimetics|May 17, 2022
Estimating curvilinear self-motion from optic flow with a biologically inspired neural systemOliver W Layton, Nathaniel Powell, Scott T Steinmetz, et al.
Journal of Vision|April 2, 2020
Affordance-based versus current-future accounts of choosing whether to pursue or abandon the chase of a moving targetScott T Steinmetz, Oliver W Layton, Nathaniel V Powell, et al.
Frontiers in Computational Neuroscience|April 18, 2022
A Dynamic Efficient Sensory Encoding Approach to Adaptive Tuning in Neural Models of Optic Flow ProcessingScott T Steinmetz, Oliver W Layton, Nathaniel V Powell, et al.
Pageof 1