Evgeniy Bart, Ph.D.
Affiliations: | 2005 | Weizmann Institute of Science, Rehovot, Israel |
Area:
Computer ScienceGoogle:
"Evgeniy Bart"Mean distance: 15.7 (cluster 29)
Parents
Sign in to add mentorShimon Ullman | grad student | 2005 | Weizmann Institute | |
(Object recognition and classification with limited training data.) |
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Publications
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Bart E, Hegdé J. (2013) Exploiting temporal continuity of views to learn visual object invariance. Frontiers in Neuroscience. 7: 26 |
Bart E, Hegde J. (2013) Invariant recognition of visual objects Frontiers in Computational Neuroscience |
Hauffen K, Bart E, Brady M, et al. (2012) Creating objects and object categories for studying perception and perceptual learning. Journal of Visualized Experiments : Jove. e3358 |
Bart E, Hegdé J. (2012) Invariant recognition of visual objects: some emerging computational principles. Frontiers in Computational Neuroscience. 6: 60 |
Bart E, Hegdé J. (2012) Invariant object recognition based on extended fragments. Frontiers in Computational Neuroscience. 6: 56 |
Kromrey S, Maestri M, Hauffen K, et al. (2010) Fragment-based learning of visual object categories in non-human primates. Plos One. 5: e15444 |
Bart E, Ullman S. (2008) Class-based feature matching across unrestricted transformations. Ieee Transactions On Pattern Analysis and Machine Intelligence. 30: 1618-31 |
Hegdé J, Bart E, Kersten D. (2008) Fragment-based learning of visual object categories. Current Biology : Cb. 18: 597-601 |
Bart E, Ullman S. (2005) Single-example learning of novel classes using representation by similarity Bmvc 2005 - Proceedings of the British Machine Vision Conference 2005 |
Bart E, Ullman S. (2005) Cross-generalization: Learning novel classes from a single example by feature replacement Proceedings - 2005 Ieee Computer Society Conference On Computer Vision and Pattern Recognition, Cvpr 2005. 672-679 |