Evidence from a new study published in PLOS Computational Biology by researchers from Brown University and led by Assistant Professor Thomas Serre suggests that when we analyze scenery we simply make the easiest judgments first, rather than following a priority order of categories.
There are many ways we understand scenery. Is it navigable or obstructed? Natural or man-made? A face or not a face? In previous experiments, researchers have found that some categorization tasks seem special, in that they occur earlier than others, leading to a hypothesis that the brain has a prescribed set of priorities. One example of this, the â€œsuperordinate advantage,â€ holds that people will first sort out global properties of a scene or â€œsuperordinateâ€ categorization before analyzing more specific properties or â€œbasicâ€ categorization. Judging â€œindoor vs. outdoor,â€ the hypothesis goes, not only does happen before â€œkitchen vs. bathroom,â€ but also must happen beforehand.
To check that assumption, Serre and colleagues iterated upon a standard computational model that could reliably rate the â€œdiscriminabilityâ€ of scenery, or how easily images could be categorized. Then they did two experiments with human volunteers. The first showed that the more discriminable scenery was as predicted by the model, the faster and more accurately people categorized it. The second showed that by manipulating discriminability they could completely wipe out the â€œsuperordinate advantage.â€ If a more basic categorization was easier, it happened faster than the superordinate categorization.
â€œThe mere fact that it is possible to reverse [the superordinate advantage], shows that it not a sequential type of process,â€ Serre said. â€œWhatever is happening in the visual system might not be as sophisticated as we thought.â€
Itâ€™s certainly still possible that a hybrid of the two hypotheses exist, Serre said. There may be some hierarchy or priorities, but discriminability is so a powerful a factor it can actually overwhelm it. Further experiments are underway.
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Contact: Thomas Serre
Address: Cognitive, Linguistic Psychological Sciences Department, Brown Institute for Brain Science, Brown University, Providence, Rhode Island, United States of America
Email: [email protected]
Citation: Sofer I, Crouzet SM, Serre T (2015) Explaining the Timing of Natural Scene Understanding with a Computational Model of Perceptual Categorization. PLoS Comput Biol 11(9):e1004456. doi:10.1371/journal.pcbi.1004456
Funding: This work was supported by the National Science Foundation (NSF) early career award [grant number IIS-1252951 to TS]. Additional support was provided by the Defense Advanced Research Projects Agency (DARPA) young faculty award [grant number YFA N66001-14-1-4037 to TS], the Office of Naval Research (ONR) grant [grant number N000141110743 to TS], the Brown Institute for Brain Sciences (BIBS), the Center for Vision Research (CVR), and the Center for Computation and Visualization (CCV). The funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
Competing Interests: The authors have declared that no competing interests exist.
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