Visual detection of time-varying signals: Opposing biases and their timescales.

Human visual perception is a complex, dynamic and fluctuating process. In addition to the incoming visual stimulus, it is affected by many other factors including temporal context, both external and internal to the observer. In this study we investigate the dynamic properties of psychophysical respo...

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Main Authors: Urit Gordon, Shimon Marom, Naama Brenner
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2019-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0224256
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spelling doaj-6914880b88514545ab4819852c2552cf2021-03-03T21:13:20ZengPublic Library of Science (PLoS)PLoS ONE1932-62032019-01-011411e022425610.1371/journal.pone.0224256Visual detection of time-varying signals: Opposing biases and their timescales.Urit GordonShimon MaromNaama BrennerHuman visual perception is a complex, dynamic and fluctuating process. In addition to the incoming visual stimulus, it is affected by many other factors including temporal context, both external and internal to the observer. In this study we investigate the dynamic properties of psychophysical responses to a continuous stream of visual near-threshold detection tasks. We manipulate the incoming signals to have temporal structures with various characteristic timescales. Responses of human observers to these signals are analyzed using tools that highlight their dynamical features as well. Our experiments show two opposing biases that shape perceptual decision making simultaneously: positive recency, biasing towards repeated response; and adaptation, entailing an increased probability of changed response. While both these effects have been reported in previous work, our results shed new light on the timescales involved in these effects, and on their interplay with varying inputs. We find that positive recency is a short-term bias, inversely correlated with response time, suggesting it can be compensated by afterthought. Adaptation, in contrast, reflects trends over longer times possibly including multiple previous trials. Our entire dataset, which includes different input signal temporal structures, is consistent with a simple model with the two biases characterized by a fixed parameter set. These results suggest that perceptual biases are inherent features which are not flexible to tune to input signals.https://doi.org/10.1371/journal.pone.0224256
collection DOAJ
language English
format Article
sources DOAJ
author Urit Gordon
Shimon Marom
Naama Brenner
spellingShingle Urit Gordon
Shimon Marom
Naama Brenner
Visual detection of time-varying signals: Opposing biases and their timescales.
PLoS ONE
author_facet Urit Gordon
Shimon Marom
Naama Brenner
author_sort Urit Gordon
title Visual detection of time-varying signals: Opposing biases and their timescales.
title_short Visual detection of time-varying signals: Opposing biases and their timescales.
title_full Visual detection of time-varying signals: Opposing biases and their timescales.
title_fullStr Visual detection of time-varying signals: Opposing biases and their timescales.
title_full_unstemmed Visual detection of time-varying signals: Opposing biases and their timescales.
title_sort visual detection of time-varying signals: opposing biases and their timescales.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2019-01-01
description Human visual perception is a complex, dynamic and fluctuating process. In addition to the incoming visual stimulus, it is affected by many other factors including temporal context, both external and internal to the observer. In this study we investigate the dynamic properties of psychophysical responses to a continuous stream of visual near-threshold detection tasks. We manipulate the incoming signals to have temporal structures with various characteristic timescales. Responses of human observers to these signals are analyzed using tools that highlight their dynamical features as well. Our experiments show two opposing biases that shape perceptual decision making simultaneously: positive recency, biasing towards repeated response; and adaptation, entailing an increased probability of changed response. While both these effects have been reported in previous work, our results shed new light on the timescales involved in these effects, and on their interplay with varying inputs. We find that positive recency is a short-term bias, inversely correlated with response time, suggesting it can be compensated by afterthought. Adaptation, in contrast, reflects trends over longer times possibly including multiple previous trials. Our entire dataset, which includes different input signal temporal structures, is consistent with a simple model with the two biases characterized by a fixed parameter set. These results suggest that perceptual biases are inherent features which are not flexible to tune to input signals.
url https://doi.org/10.1371/journal.pone.0224256
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