Core object recognition, the ability to rapidly recognize objects despite variations in their appearance, is largely solved through the feedforward processing of visual information. Deep neural networks are shown to achieve human-level performance in these tasks, and explain the primate brain representation. On the other hand, object recognition under more challenging conditions (i.e. beyond the core recognition problem) is less characterized. One such example is object recognition under occlusion. It is unclear to what extent feedforward and recurrent processes contribute in object recognition under occlusion. Furthermore, we do not know whether the conventional deep neural networks, such as AlexNet, which were shown to be successful in so...
Acknowledgements: This research was funded in whole, or in part, by the Wellcome Trust [Grant number...
Contains fulltext : 236026.pdf (Publisher’s version ) (Open Access)Objects can be ...
Objects can be recognized based on their intrinsic features, including shape, color, and texture. In...
Core object recognition, the ability to rapidly recognize objects despite variations in their appear...
Core object recognition, the ability to rapidly recognize objects despite variations in their appear...
Core object recognition, the ability to rapidly recognize objects despite variations in their appear...
Existing models of visual object recognition posit that recognition is orchestrated by a hierarchy o...
Mounting evidence suggests that 'core object recognition,' the ability to rapidly recognize objects ...
Mounting evidence suggests that 'core object recognition,' the ability to rapidly recognize objects ...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Mounting evidence suggests that ‘core object recognition,’ the ability to rapidly recognize objects ...
AbstractOur understanding of the neural basis of object recognition is based primarily on work with ...
Mounting evidence suggests that ‘core object recognition,’ the ability to rapidly recognize objects ...
Humans can quickly recognize objects in a dynamically changing world. This ability is showcased by t...
Acknowledgements: This research was funded in whole, or in part, by the Wellcome Trust [Grant number...
Contains fulltext : 236026.pdf (Publisher’s version ) (Open Access)Objects can be ...
Objects can be recognized based on their intrinsic features, including shape, color, and texture. In...
Core object recognition, the ability to rapidly recognize objects despite variations in their appear...
Core object recognition, the ability to rapidly recognize objects despite variations in their appear...
Core object recognition, the ability to rapidly recognize objects despite variations in their appear...
Existing models of visual object recognition posit that recognition is orchestrated by a hierarchy o...
Mounting evidence suggests that 'core object recognition,' the ability to rapidly recognize objects ...
Mounting evidence suggests that 'core object recognition,' the ability to rapidly recognize objects ...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Recent advances in machine learning have enabled neural networks to solve tasks humans typically per...
Mounting evidence suggests that ‘core object recognition,’ the ability to rapidly recognize objects ...
AbstractOur understanding of the neural basis of object recognition is based primarily on work with ...
Mounting evidence suggests that ‘core object recognition,’ the ability to rapidly recognize objects ...
Humans can quickly recognize objects in a dynamically changing world. This ability is showcased by t...
Acknowledgements: This research was funded in whole, or in part, by the Wellcome Trust [Grant number...
Contains fulltext : 236026.pdf (Publisher’s version ) (Open Access)Objects can be ...
Objects can be recognized based on their intrinsic features, including shape, color, and texture. In...