Attention and prediction modulations in expected and unexpected visuospatial trajectories

2020 
Humans are constantly exposed to a rich tapestry of visual information in a potentially changing environment. To cope with the computational burden this engenders, our perceptual system must use prior context to simultaneously prioritise stimuli of importance and suppress irrelevant surroundings. This study investigated the influence of prediction and attention in visual perception by investigating event-related potentials (ERPs) often associated with these processes, N170 and N2pc for prediction and attention respectively. A contextual trajectory paradigm was used which violated visual predictions and neglected to predetermine areas of spatial interest, to account for the potentially unpredictable nature of a real-life visual scene. Participants (N=36) viewed a visual display of cued and non-cued shapes rotating in a five-step predictable trajectory, with the fifth and final position of either the cued or non-cued shape occurring in a predictable or unpredictable spatial location. Results showed both enhanced N170 and N2pc amplitudes to unpredictable compared to predictable stimuli, and furthermore the N170 was larger to cued than non-cued stimuli. In accordance with previous research these results suggest the N170 is in part a visual prediction error response with respect to higher-level visual processes, and furthermore the N2pc may index attention reorientation. The results demonstrate prior context influences the sensitivity of the N170 and N2pc electrophysiological responses. The findings suggest attention boosts the precision of prediction error signals, furthering our understanding of how expectation can modulate prediction in selective visuospatial attention. Implications of this research provide insight into how prior context in visuospatial motion guides attention in a visual scene.
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