Object recognition in primates: What can early visual areas contribute?
Christian Quaia, Richard J Krauzlis

TL;DR
This paper investigates how early visual areas like V1 and LGN contribute to object recognition in primates, especially in peripheral vision, challenging the focus on infero-temporal cortex and proposing a parallel processing model.
Contribution
It demonstrates that models of early visual areas, particularly V1, can reliably support peripheral object recognition, suggesting a broader view of the visual recognition system.
Findings
V1 models achieve over 80% accuracy in face recognition tasks.
LGN models perform significantly worse than V1 models.
Peripheral recognition plays a crucial role in daily visual behavior.
Abstract
If neuroscientists were asked which brain area is responsible for object recognition in primates, most would probably answer infero-temporal (IT) cortex. While IT is likely responsible for fine discriminations, and it is accordingly dominated by foveal visual inputs, there is more to object recognition than fine discrimination. Importantly, foveation of an object of interest usually requires recognizing, with reasonable confidence, its presence in the periphery. Arguably, IT plays a secondary role in such peripheral recognition, and other visual areas might instead be more critical. To investigate how signals carried by early visual processing areas (such as LGN and V1) could be used for object recognition in the periphery, we focused here on the task of distinguishing faces from non-faces. We tested how sensitive various models were to nuisance parameters, such as changes in scale and…
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Taxonomy
TopicsFace Recognition and Perception · Visual perception and processing mechanisms · Memory and Neural Mechanisms
MethodsFocus
