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Attentional capture by irrelevant transients leads to perceptual errors in a competitive change detection task.

作者信息

Schneider Daniel, Beste Christian, Wascher Edmund

机构信息

Leibniz Research Centre for Working Environment and Human Factors Dortmund, Germany.

出版信息

Front Psychol. 2012 May 25;3:164. doi: 10.3389/fpsyg.2012.00164. eCollection 2012.

Abstract

Theories on visual change detection imply that attention is a necessary but not sufficient prerequisite for aware perception. Misguidance of attention due to salient irrelevant distractors can therefore lead to severe deficits in change detection. The present study investigates the mechanisms behind such perceptual errors and their relation to error processing on higher cognitive levels. Participants had to detect a luminance change that occasionally occurred simultaneously with an irrelevant orientation change in the opposite hemi-field (conflict condition). By analyzing event-related potentials in the EEG separately in those error prone conflict trials for correct and erroneous change detection, we demonstrate that only correct change detection was associated with the allocation of attention to the relevant luminance change. Erroneous change detection was associated with an initial capture of attention toward the irrelevant orientation change in the N1 time window and a lack of subsequent target selection processes (N2pc). Errors were additionally accompanied by an increase of the fronto-central N2 and a kind of error negativity (Ne or ERN), which, however, peaked prior to the response. These results suggest that a strong perceptual conflict by salient distractors can disrupt the further processing of relevant information and thus affect its aware perception. Yet, it does not impair higher cognitive processes for conflict and error detection, indicating that these processes are independent from awareness.

摘要
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/331c/3360465/4aa3714cf558/fpsyg-03-00164-g001.jpg

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