A voxel-wise encoding model for early visual areas decodes mental images of remembered scenes

Thomas Naselaris, Cheryl A. Olman, Dustin E. Stansbury, Kamil Ugurbil, Jack L. Gallant

Research output: Contribution to journalArticlepeer-review

176 Scopus citations

Abstract

Recent multi-voxel pattern classification (MVPC) studies have shown that in early visual cortex patterns of brain activity generated during mental imagery are similar to patterns of activity generated during perception. This finding implies that low-level visual features (e.g., space, spatial frequency, and orientation) are encoded during mental imagery. However, the specific hypothesis that low-level visual features are encoded during mental imagery is difficult to directly test using MVPC. The difficulty is especially acute when considering the representation of complex, multi-object scenes that can evoke multiple sources of variation that are distinct from low-level visual features. Therefore, we used a voxel-wise modeling and decoding approach to directly test the hypothesis that low-level visual features are encoded in activity generated during mental imagery of complex scenes. Using fMRI measurements of cortical activity evoked by viewing photographs, we constructed voxel-wise encoding models of tuning to low-level visual features. We also measured activity as subjects imagined previously memorized works of art. We then used the encoding models to determine if putative low-level visual features encoded in this activity could pick out the imagined artwork from among thousands of other randomly selected images. We show that mental images can be accurately identified in this way; moreover, mental image identification accuracy depends upon the degree of tuning to low-level visual features in the voxels selected for decoding. These results directly confirm the hypothesis that low-level visual features are encoded during mental imagery of complex scenes. Our work also points to novel forms of brain-machine interaction: we provide a proof-of-concept demonstration of an internet image search guided by mental imagery.

Original languageEnglish (US)
Pages (from-to)215-228
Number of pages14
JournalNeuroImage
Volume105
DOIs
StatePublished - Jan 5 2015

Bibliographical note

Funding Information:
This work was supported by P30 NS076408 and P41 EB015894 to KU, NEI R01-EY019684 to JLG, and NEI R01-EY023384 to TN.

Publisher Copyright:
© 2014 .

Keywords

  • Decoding
  • FMRI
  • Mental imagery
  • Perception
  • Vision
  • Voxel-wise encoding models

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