Literature DB >> 31338936

A data-driven approach to stimulus selection reveals an image-based representation of objects in high-level visual areas.

David D Coggan1, Afrodite Giannakopoulou1, Sanah Ali1, Burcu Goz1, David M Watson2, Tom Hartley1,3, Daniel H Baker1,3, Timothy J Andrews1.   

Abstract

The ventral visual pathway is directly involved in the perception and recognition of objects. However, the extent to which the neural representation of objects in this region reflects low-level or high-level properties remains unresolved. A problem in resolving this issue is that only a small proportion of the objects experienced during natural viewing can be shown during a typical experiment. This can lead to an uneven sampling of objects that biases our understanding of how they are represented. To address this issue, we developed a data-driven approach to stimulus selection that involved describing a large number objects in terms of their image properties. In the first experiment, clusters of objects were evenly selected from this multi-dimensional image space. Although the clusters did not have any consistent semantic features, each elicited a distinct pattern of neural response. In the second experiment, we asked whether high-level, category-selective patterns of response could be elicited by objects from other categories, but with similar image properties. Object clusters were selected based on the similarity of their image properties to objects from five different categories (bottle, chair, face, house, and shoe). The pattern of response to each metameric object cluster was similar to the pattern elicited by objects from the corresponding category. For example, the pattern for bottles was similar to the pattern for objects with similar image properties to bottles. In both experiments, the patterns of response were consistent across participants providing evidence for common organising principles. This study provides a more ecological approach to understanding the perceptual representations of objects and reveals the importance of image properties.
© 2019 Wiley Periodicals, Inc.

Entities:  

Keywords:  data-driven; fMRI; objects; ventral visual pathway

Mesh:

Year:  2019        PMID: 31338936      PMCID: PMC6865484          DOI: 10.1002/hbm.24732

Source DB:  PubMed          Journal:  Hum Brain Mapp        ISSN: 1065-9471            Impact factor:   5.038


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