Each view of our environment captures only a subset of our immersive surroundings. Yet, our visual experience feels seamless. A puzzle for human neuroscience is to determine what cognitive mechanisms enable us to overcome our limited field of view and efficiently anticipate new views as we sample our visual surroundings. Here, we tested whether memory-based predictions of upcoming scene views facilitate efficient perceptual judgments across head turns. We tested this hypothesis using immersive, head-mounted virtual reality (VR). After learning a set of immersive real-world environments, participants (n = 101 across 4 experiments) were briefly primed with a single view from a studied environment and then turned left or right to make a perceptual judgment about an adjacent scene view. We found that participants' perceptual judgments were faster when they were primed with images from the same (vs. neutral or different) environments. Importantly, priming required memory: it only occurred in learned (vs. novel) environments, where the link between adjacent scene views was known. Further, consistent with a role in supporting active vision, priming only occurred in the direction of planned head turns and only benefited judgments for scene views presented in their learned spatiotopic positions. Taken together, we propose that memory-based predictions facilitate rapid perception across large-scale visual actions, such as head and body movements, and may be critical for efficient behavior in complex immersive environments.
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http://dx.doi.org/10.1016/j.cub.2024.11.024 | DOI Listing |
Curr Biol
December 2024
Department of Psychological and Brain Sciences, Dartmouth College, 3 Maynard Street, Hanover, NH 03755, USA. Electronic address:
Each view of our environment captures only a subset of our immersive surroundings. Yet, our visual experience feels seamless. A puzzle for human neuroscience is to determine what cognitive mechanisms enable us to overcome our limited field of view and efficiently anticipate new views as we sample our visual surroundings.
View Article and Find Full Text PDFCognition
February 2025
College of Foreign Languages and Literature, Fudan University, China.
In recent years, several influential computational models and metrics have been proposed to predict how humans comprehend and process sentence. One particularly promising approach is contextual semantic similarity. Inspired by the attention algorithm in Transformer and human memory mechanisms, this study proposes an "attention-aware" approach for computing contextual semantic relevance.
View Article and Find Full Text PDFEnviron Monit Assess
November 2024
LETSMP, Department of Physics, Faculty of Science, Ibn Zohr University, Agadir, Morocco.
Over time, computing power and storage resource advancements have enabled the widespread accumulation and utilization of data across various domains. In the field of air quality, analyzing data and developing air quality models have become pivotal in safeguarding public health. Despite significant progress in modeling, the critical need for accurate pollutant predictions persists.
View Article and Find Full Text PDFJ Bodyw Mov Ther
October 2024
State University of Santa Catarina (UDESC), Department of Health Sciences, Brazil.
Introduction: Over the years, human activity and performance show a normal decline in cognitive and sensorimotor tasks.
Objective: To identify physical activity strategies for mild cognitive impairment (MCI) and describe their main predictors during aging.
Method: This systematic review identified the outcomes of physical activity strategies used in MCI and described their main predictors during aging.
Cognition
January 2025
Institute for Experimental Psychology, Faculty of Mathematics and Natural Sciences, Heinrich Heine University Düsseldorf, Germany. Electronic address:
The Continued Influence Effect (CIE) is the phenomenon that retracted information often continues to influence judgments and inferences. The CIE is rational when the source that retracts the information (the retractor) is less credible than the source that originally presented the information (the informant; Connor Desai et al., 2020).
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