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Related Concept Videos

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Related Experiment Video

Updated: May 10, 2025

MPI CyberMotion Simulator: Implementation of a Novel Motion Simulator to Investigate Multisensory Path Integration in Three Dimensions
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Hierarchical motion perception as causal inference.

Sabyasachi Shivkumar1,2, Gregory C DeAngelis3,4, Ralf M Haefner5,6

  • 1Brain and Cognitive Sciences, University of Rochester, Rochester, NY, USA. sabyashiv@gmail.com.

Nature Communications
|April 24, 2025
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Summary
This summary is machine-generated.

Perceiving motion involves a hierarchy of reference frames, not just one. This Bayesian model explains how the brain infers these frames, improving visual processing models and justifying Gestalt principles.

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Area of Science:

  • Cognitive Neuroscience
  • Computational Vision
  • Psychophysics

Background:

  • Perception of motion is complex, with debate over the dominant reference frame (retinotopic, egocentric, world-centric, object-centric).
  • Previous psychophysical studies yielded conflicting evidence regarding the reference frame guiding visual perception.

Purpose of the Study:

  • To introduce a hierarchical Bayesian model that maps retinal velocities to perceived velocities.
  • To investigate how the brain infers structured reference frames for motion perception.
  • To provide a quantitative justification for Gestalt principles in visual processing.

Main Methods:

  • Developed a hierarchical Bayesian model incorporating a delta component to formalize stationary velocities in reference frames.
  • Inverted the model to achieve automatic segmentation of visual inputs into groups and supergroups.
  • Conducted two experiments to test critical model predictions and infer subjective reference frames.

Main Results:

  • The model successfully infers structured reference frames, explaining motion perception within appropriate contexts.
  • Experimental data supported the model's predictions regarding reference frame inference.
  • Individual observers' subjective reference frames were inferred by fitting the model to their data.

Conclusions:

  • The hierarchical Bayesian model offers a unified framework for understanding motion perception across multiple reference frames.
  • The model provides a normative explanation for key Gestalt principles, enhancing our understanding of visual processing.
  • This approach offers a foundation for developing more sophisticated models of visual perception.