A neural correlate of perceptual segmentation in macaque middle temporal cortical area

High-resolution vision requires fine retinal sampling followed by integration to recover object properties. Importantly, accuracy is lost if local samples from different objects are intermixed. Thus, segmentation, grouping of image regions for separate processing, is crucial for perception. Previous...

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Veröffentlicht in:Nature communications 2022-08, Vol.13 (1), p.4967-4967, Article 4967
Hauptverfasser: Clark, Andrew M., Bradley, David C.
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Sprache:eng
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Zusammenfassung:High-resolution vision requires fine retinal sampling followed by integration to recover object properties. Importantly, accuracy is lost if local samples from different objects are intermixed. Thus, segmentation, grouping of image regions for separate processing, is crucial for perception. Previous work has used bi-stable plaid patterns, which can be perceived as either a single or multiple moving surfaces, to study this process. Here, we report a relationship between activity in a mid-level site in the primate visual pathways and segmentation judgments. Specifically, we find that direction selective middle temporal neurons are sensitive to texturing cues used to bias the perception of bi-stable plaids and exhibit a significant trial-by-trial correlation with subjective perception of a constant stimulus. This correlation is greater in units that signal global motion in patterns with multiple local orientations. Thus, we conclude the middle temporal area contains a signal for segmenting complex scenes into constituent objects and surfaces. Perceptual segmentation, grouping distinct parts of the input for further processing, is a hard problem for sensory systems. Here, the authors report a link between spiking activity in primate visual cortical area MT and subjective segmentation.
ISSN:2041-1723
2041-1723
DOI:10.1038/s41467-022-32555-y