A rodent model for the study of invariant visual object recognition

TitleA rodent model for the study of invariant visual object recognition
Publication TypeJournal Article
Year of Publication2009
AuthorsZoccolan D, Oertelt N, DiCarlo JJ, Cox DD
JournalProceedings of the National Academy of Sciences of the United States of America
KeywordsAnimal, Animals, Behavior, Learning, Male, Models, Rats, Visual Perception

The human visual system is able to recognize objects despite tremendous variation in their appearance on the retina resulting from variation in view, size, lighting, etc. This ability–known as "invariant" object recognition–is central to visual perception, yet its computational underpinnings are poorly understood. Traditionally, nonhuman primates have been the animal model-of-choice for investigating the neuronal substrates of invariant recognition, because their visual systems closely mirror our own. Meanwhile, simpler and more accessible animal models such as rodents have been largely overlooked as possible models of higher-level visual functions, because their brains are often assumed to lack advanced visual processing machinery. As a result, little is known about rodents' ability to process complex visual stimuli in the face of real-world image variation. In the present work, we show that rats possess more advanced visual abilities than previously appreciated. Specifically, we trained pigmented rats to perform a visual task that required them to recognize objects despite substantial variation in their appearance, due to changes in size, view, and lighting. Critically, rats were able to spontaneously generalize to previously unseen transformations of learned objects. These results provide the first systematic evidence for invariant object recognition in rats and argue for an increased focus on rodents as models for studying high-level visual processing.

URLhttp://dicarlolab.mit.edu/sites/dicarlolab.mit.edu/files/pubs/zoccolan et al 2009.pdf
Refereed DesignationRefereed

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