ArXiv TLDR

Self-organized MT Direction Maps Emerge from Spatiotemporal Contrastive Optimization

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2605.11718

Zhaotian Gu, Molan Li, Jie Su, Chang Liu, Tianyi Qian + 1 more

q-bio.NCcs.AIcs.NE

TLDR

A spatiotemporal TDANN model, trained with self-supervised learning, spontaneously generates brain-like direction maps in the visual cortex.

Key contributions

  • Developed a spatiotemporal TDANN using 3D ResNet, MoCo self-supervision, and a biologically inspired spatial loss.
  • Demonstrated spontaneous emergence of brain-like MT direction maps and topological pinwheel structures.
  • Revealed MT tuning properties result from a trade-off between discriminative pressure and spatial regularization.
  • Quantitatively matched model representations to in vivo macaque MT physiological baselines.

Why it matters

This paper unifies the computational origins of the visual cortex's ventral and dorsal streams. It establishes a general mechanism for cortical self-organization, advancing our understanding of brain development.

Original Abstract

The spatial and functional organization of the primate visual cortex is a fundamental problem in neuroscience. While recent computational frameworks like the Topographic Deep Artificial Neural Network (TDANN) have successfully modeled spatial organization in the ventral stream, the computational origins of the dorsal stream's distinct topographies, such as direction-selective maps in the middle temporal (MT) area, remain largely unresolved. In this work, we present a spatiotemporal TDANN to investigate whether MT topography is governed by the same universal principles. By training a 3D ResNet on naturalistic videos via a Momentum Contrast (MoCo) self-supervised paradigm alongside a biologically inspired spatial loss, we demonstrate the spontaneous emergence of brain-like direction maps and topological pinwheel structures. Crucially, we reveal that MT tuning properties, characterized by strong direction selectivity paired with a residual axial component, arise from a strict optimization trade-off between task-driven discriminative pressure and spatial regularization. The model's representations quantitatively match in vivo macaque MT physiological baselines, including direction selectivity index, circular variance, and pinwheel density. These findings unify the computational origins of the ventral and dorsal streams, establishing a general mechanism for cortical self-organization.

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