Saved in:
Bibliographic Details
Main Authors: Dunnhofer, Matteo, Micheloni, Christian, Kar, Kohitij
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.03392
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914237764337664
author Dunnhofer, Matteo
Micheloni, Christian
Kar, Kohitij
author_facet Dunnhofer, Matteo
Micheloni, Christian
Kar, Kohitij
contents Feedforward artificial neural networks (ANNs) trained on static images remain the dominant models of the the primate ventral visual stream, yet they are intrinsically limited to static computations. The primate world is dynamic, and the macaque ventral visual pathways, specifically the inferior temporal (IT) cortex not only supports object recognition but also encodes object motion velocity during naturalistic video viewing. Does IT's temporal responses reflect nothing more than time-unfolded feedforward transformations, framewise features with shallow temporal pooling, or do they embody richer dynamic computations? We tested this by comparing macaque IT responses during naturalistic videos against static, recurrent, and video-based ANN models. Video models provided modest improvements in neural predictivity, particularly at later response stages, raising the question of what kind of dynamics they capture. To probe this, we applied a stress test: decoders trained on naturalistic videos were evaluated on "appearance-free" variants that preserve motion but remove shape and texture. IT population activity generalized across this manipulation, but all ANN classes failed. Thus, current video models better capture appearance-bound dynamics rather than the appearance-invariant temporal computations expressed in IT, underscoring the need for new objectives that encode biological temporal statistics and invariances.
format Preprint
id arxiv_https___arxiv_org_abs_2601_03392
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Better, But Not Sufficient: Testing Video ANNs Against Macaque IT Dynamics
Dunnhofer, Matteo
Micheloni, Christian
Kar, Kohitij
Computer Vision and Pattern Recognition
Neural and Evolutionary Computing
Feedforward artificial neural networks (ANNs) trained on static images remain the dominant models of the the primate ventral visual stream, yet they are intrinsically limited to static computations. The primate world is dynamic, and the macaque ventral visual pathways, specifically the inferior temporal (IT) cortex not only supports object recognition but also encodes object motion velocity during naturalistic video viewing. Does IT's temporal responses reflect nothing more than time-unfolded feedforward transformations, framewise features with shallow temporal pooling, or do they embody richer dynamic computations? We tested this by comparing macaque IT responses during naturalistic videos against static, recurrent, and video-based ANN models. Video models provided modest improvements in neural predictivity, particularly at later response stages, raising the question of what kind of dynamics they capture. To probe this, we applied a stress test: decoders trained on naturalistic videos were evaluated on "appearance-free" variants that preserve motion but remove shape and texture. IT population activity generalized across this manipulation, but all ANN classes failed. Thus, current video models better capture appearance-bound dynamics rather than the appearance-invariant temporal computations expressed in IT, underscoring the need for new objectives that encode biological temporal statistics and invariances.
title Better, But Not Sufficient: Testing Video ANNs Against Macaque IT Dynamics
topic Computer Vision and Pattern Recognition
Neural and Evolutionary Computing
url https://arxiv.org/abs/2601.03392