Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Multi-input and Multi-variable systems01:22

Multi-input and Multi-variable systems

149
Cruise control systems in cars are designed as multi-input systems to maintain a driver's desired speed while compensating for external disturbances such as changes in terrain. The block diagram for a cruise control system typically includes two main inputs: the desired speed set by the driver and any external disturbances, such as the incline of the road. By adjusting the engine throttle, the system maintains the vehicle's speed as close to the desired value as possible.
In the absence...
149
Parallel Processing01:20

Parallel Processing

224
The brain processes sensory information rapidly due to parallel processing, which involves sending data across multiple neural pathways at the same time. This method allows the brain to manage various sensory qualities, such as shapes, colors, movements, and locations, all concurrently. For instance, when observing a forest landscape, the brain simultaneously processes the movement of leaves, the shapes of trees, the depth between them, and the various shades of green. This enables a quick and...
224
Inertial Frames of Reference01:03

Inertial Frames of Reference

7.4K
Newton’s first law is usually considered to be a statement about reference frames. It provides a method for identifying a special type of reference frame: the inertial reference frame. In principle, we can make the net force on a body zero. If its velocity relative to a given frame is constant, then that frame is said to be inertial. So, by definition, an inertial reference frame is a reference frame where Newton's first law holds valid. Newton's first law applies to objects with...
7.4K
Non-inertial Frames of Reference01:27

Non-inertial Frames of Reference

6.1K
A reference frame accelerating or decelerating relative to an inertial frame is a non-inertial frame. To help understand this, consider what taking off in an airplane, turning a corner in a car, riding a merry-go-round, and the circular motion of a tropical cyclone all have in common. All these systems are accelerating, decelerating, or rotating relative to the Earth; hence, they all are non-inertial frames. All these systems exhibit inertial forces, which merely seem to arise from motion,...
6.1K
Depth Perception and Spatial Vision01:15

Depth Perception and Spatial Vision

897
Depth perception is the ability to perceive objects three-dimensionally. It relies on two types of cues: binocular and monocular. Binocular cues depend on the combination of images from both eyes and how the eyes work together. Since the eyes are in slightly different positions, each eye captures a slightly different image. This disparity between images, known as binocular disparity, helps the brain interpret depth. When the brain compares these images, it determines the distance to an object.
897

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Choice anticipation as gated accumulation of sensory predictions.

Journal of neurophysiology·2025
Same author

Main Sequence of Human Luminance-evoked Pupil Dynamics.

Journal of cognitive neuroscience·2025
Same author

Generative adversarial collaborations: a new model of scientific discourse.

Trends in cognitive sciences·2024
Same author

Latency and amplitude of catch-up saccades to accelerating targets.

Journal of neurophysiology·2024
Same author

Changes in social environment impact primate gut microbiota composition.

Animal microbiome·2024
Same author

Visual working memory models of delayed estimation do not generalize to whole-report tasks.

Journal of vision·2024
Same journal

Erratum: Yao et al., "Estrogen Regulates Bcl-w and Bim Expression: Role in Protection against β-Amyloid Peptide-Induced Neuronal Death".

The Journal of neuroscience : the official journal of the Society for Neuroscience·2026
Same journal

Erratum: L'Episcopo et al., "Plasticity of Subventricular Zone Neuroprogenitors in MPTP (1-Methyl-4-Phenyl-1,2,3,6-Tetrahydropyridine) Mouse Model of Parkinson's Disease Involves Cross Talk between Inflammatory and Wnt/β-Catenin Signaling Pathways: Functional Consequences for Neuroprotection and Repair".

The Journal of neuroscience : the official journal of the Society for Neuroscience·2026
Same journal

Representations of subsecond duration-based timing by complex spike synchrony in cerebellar Purkinje neurons.

The Journal of neuroscience : the official journal of the Society for Neuroscience·2026
Same journal

The extended language network: Language-responsive brain areas whose contributions to language remain to be discovered.

The Journal of neuroscience : the official journal of the Society for Neuroscience·2026
Same journal

Cortical and thalamic afferent connectomes distinguish ACC subregions of the macaque brain.

The Journal of neuroscience : the official journal of the Society for Neuroscience·2026
Same journal

The synaptic vesicle priming protein Munc13 mediates evoked somatodendritic dopamine release.

The Journal of neuroscience : the official journal of the Society for Neuroscience·2026
See all related articles

Related Experiment Video

Updated: Sep 9, 2025

MPI CyberMotion Simulator: Implementation of a Novel Motion Simulator to Investigate Multisensory Path Integration in Three Dimensions
09:46

MPI CyberMotion Simulator: Implementation of a Novel Motion Simulator to Investigate Multisensory Path Integration in Three Dimensions

Published on: May 10, 2012

12.7K

Beyond Divisive Normalization: Scalable Feedforward Networks for Multisensory Integration Across Reference Frames.

Arefeh Farahmandi1, Parisa Abedi Khoozani, Gunnar Blohm

  • 1Centre for Neuroscience Studies, Queen's University, Kingston, Ontario K7L 3N6, Canada 21afna@queensu.ca.

The Journal of Neuroscience : the Official Journal of the Society for Neuroscience
|August 29, 2025
PubMed
Summary
This summary is machine-generated.

This study introduces a new feed-forward neural network model for multisensory integration (MSI). The model approximates Bayesian inference across reference frames without divisive normalization, challenging existing theories.

Keywords:
Bayesian inferencecue combinationneural networkspopulation codeprobabilistic inferencereference frame transformations

More Related Videos

Using the Race Model Inequality to Quantify Behavioral Multisensory Integration Effects
08:13

Using the Race Model Inequality to Quantify Behavioral Multisensory Integration Effects

Published on: May 10, 2019

6.5K
Testing Sensory and Multisensory Function in Children with Autism Spectrum Disorder
09:13

Testing Sensory and Multisensory Function in Children with Autism Spectrum Disorder

Published on: April 22, 2015

16.6K

Related Experiment Videos

Last Updated: Sep 9, 2025

MPI CyberMotion Simulator: Implementation of a Novel Motion Simulator to Investigate Multisensory Path Integration in Three Dimensions
09:46

MPI CyberMotion Simulator: Implementation of a Novel Motion Simulator to Investigate Multisensory Path Integration in Three Dimensions

Published on: May 10, 2012

12.7K
Using the Race Model Inequality to Quantify Behavioral Multisensory Integration Effects
08:13

Using the Race Model Inequality to Quantify Behavioral Multisensory Integration Effects

Published on: May 10, 2019

6.5K
Testing Sensory and Multisensory Function in Children with Autism Spectrum Disorder
09:13

Testing Sensory and Multisensory Function in Children with Autism Spectrum Disorder

Published on: April 22, 2015

16.6K

Area of Science:

  • Neuroscience
  • Computational Neuroscience
  • Cognitive Science

Background:

  • Multisensory integration is crucial for perception and action, involving reference frame transformations.
  • Bayesian inference models multisensory integration, but neural mechanisms remain debated.
  • Divisive normalization is a proposed mechanism, yet its brain implementation is unclear and models struggle with scalability.

Purpose of the Study:

  • To propose an alternative model for multisensory integration that approximates Bayesian inference.
  • To investigate if feed-forward neural networks can achieve multisensory integration without explicit divisive operations.
  • To challenge the necessity of divisive normalization in neural computations for multisensory integration.

Main Methods:

  • Developed a multilayer-feedforward neural network model for multisensory integration (MSI).
  • Trained the network on the analytical Bayesian solution for multisensory integration across different reference frames.
  • Evaluated the model's ability to replicate empirical principles of multisensory integration and neural activity in Ventral Intraparietal (VIP) neurons.

Main Results:

  • The proposed feed-forward network successfully approximates Bayesian inference for multisensory integration.
  • The model exhibits empirical principles of multisensory integration and mimics behavior observed in VIP neurons.
  • Achieved multisensory integration across reference frames without requiring explicit divisive normalization or specific connectivity structures.

Conclusions:

  • Simple feed-forward networks with additive units can approximate optimal Bayesian inference for multisensory integration.
  • Explicit divisive normalization may not be necessary for the brain to perform multisensory integration.
  • This work provides insights into neural computations underlying multisensory processing and challenges existing models.