Abstract
The anterior inferotemporal cortex (IT) is the highest stage along the hierarchy of visual areas that, in primates, processes visual objects. Although several lines of evidence suggest that IT primarily represents visual shape information, some recent studies have argued that neuronal ensembles in IT code the semantic membership of visual objects (i.e., represent conceptual classes such as animate and inanimate objects). In this study, we investigated to what extent semantic, rather than purely visual information, is represented in IT by performing a multivariate analysis of IT responses to a set of visual objects. By relying on a variety of machine-learning approaches (including a cutting-edge clustering algorithm that has been recently developed in the domain of statistical physics), we found that, in most instances, IT representation of visual objects is accounted for by their similarity at the level of shape or, more surprisingly, low-level visual properties. Only in a few cases we observed IT representations of semantic classes that were not explainable by the visual similarity of their members. Overall, these findings reassert the primary function of IT as a conveyor of explicit visual shape information, and reveal that low-level visual properties are represented in IT to a greater extent than previously appreciated. In addition, our work demonstrates how combining a variety of state-of-the-art multivariate approaches, and carefully estimating the contribution of shape similarity to the representation of object categories, can substantially advance our understanding of neuronal coding of visual objects in cortex.
Highlights
In primates, visual object information is processed through a hierarchy of cortico-cortical stages that culminates with the inferotemporal cortex (IT) [1,2,3,4,5,6]
Our results show that the response patterns of a population of inferotemporal neurons are better accounted for by shape similarity than categorical membership
This reasserts the primary function of IT as a visual area and demonstrates how state-of-the-art computational approaches can advance our understanding of neuronal coding in the brain
Summary
Visual object information is processed through a hierarchy of cortico-cortical stages (the ventral visual pathway) that culminates with the inferotemporal cortex (IT) [1,2,3,4,5,6]. Because of the non-linear mapping between the visual input space and IT neuronal responses, it is virtually impossible to precisely estimate the tuning of individual IT neurons over the image space (but see [7,8]). A related study compared how a set of visual objects was represented in monkey IT and its human homologous, finding that many semantic categories were represented well in both species (with a primary, sharp distinction between animate and inanimate objects) and reporting the inadequacy of various image-based similarity metrics to account for the observed patterns of neuronal responses [15]
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