1. Attention modulates neural representation to render reconstructions according to subjective appearance.
- Author
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Horikawa, Tomoyasu and Kamitani, Yukiyasu
- Subjects
- *
IMAGE reconstruction , *MACHINE learning , *FUNCTIONAL magnetic resonance imaging - Abstract
Stimulus images can be reconstructed from visual cortical activity. However, our perception of stimuli is shaped by both stimulus-induced and top-down processes, and it is unclear whether and how reconstructions reflect top-down aspects of perception. Here, we investigate the effect of attention on reconstructions using fMRI activity measured while subjects attend to one of two superimposed images. A state-of-the-art method is used for image reconstruction, in which brain activity is translated (decoded) to deep neural network (DNN) features of hierarchical layers then to an image. Reconstructions resemble the attended rather than unattended images. They can be modeled by superimposed images with biased contrasts, comparable to the appearance during attention. Attentional modulations are found in a broad range of hierarchical visual representations and mirror the brain–DNN correspondence. Our results demonstrate that top-down attention counters stimulus-induced responses, modulating neural representations to render reconstructions in accordance with subjective appearance. Horikawa and Kamitani investigate the effects of attention on visual image reconstructions from fMRI activity measured while human participants focus on one of two superimposed images. By reconstructing images from deep neural network features decoded from the brain, they show that top-down attention counters stimulus-induced responses, modulating neural representations to render reconstructions in accordance with subjective appearance. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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