AI Article Synopsis

  • Humans quickly categorize natural scenes, especially those with animals, in about 150 milliseconds, suggesting that initial visual processing from the primary visual cortex (V1) to higher areas is crucial for this task.
  • Recent studies indicate that feedback interactions between lower and higher levels in the visual processing hierarchy also play a role in how we categorize these scenes.
  • An experiment using EEG and object substitution masking showed that diminished visual clarity due to masking slowed down categorization and affected the brain's response to different types of scenes, highlighting that recurrent processes improve our conscious perception and help us categorize stimuli more effectively.

Article Abstract

Humans are rapid in categorizing natural scenes. Electrophysiological recordings reveal that scenes containing animals can be categorized within 150 msec, which has been interpreted to indicate that feedforward flow of information from V1 to higher visual areas is sufficient for visual categorization. However, recent studies suggest that recurrent interactions between higher and lower levels in the visual hierarchy may also be involved in categorization. To clarify the role of recurrent processing in scene categorization, we recorded EEG and manipulated recurrent processing with object substitution masking while the participants performed a go/no-go animal/nonanimal categorization task. The quality of visual awareness was measured with a perceptual awareness scale after each trial. Masking reduced the clarity of perceptual awareness, slowed down categorization speed for scenes that were not clearly perceived, and reduced the electrophysiological difference elicited by animal and nonanimal scenes after 150 msec. The results imply that recurrent processes enhance the resolution of conscious representations and thus support categorization of stimuli that are difficult to categorize on the basis of the coarse feedforward representations alone.

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http://dx.doi.org/10.1162/jocn_a_00486DOI Listing

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