AI RESEARCH

Characterizing Universal Object Representations Across Vision Models

arXiv CS.LG

ArXi:2605.13675v1 Announce Type: cross Deep neural networks trained with different architectures, objectives, and datasets have been reported to converge on similar visual representations. However, what remains unknown is which visual properties models actually converge on and which factors may underlie this convergence. To address this, we decompose the object similarity structure of 162 diverse vision models into a small set of non-negative dimensions. To determine universal versus model-specific dimensions, we then estimate how often each dimension reappears across models.