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All SourcesarXiv
#diffusion transformers

DINO-SAE: DINO Spherical Autoencoder for High-Fidelity Image Reconstruction and Generation

Intermediate
Hun Chang, Byunghee Cha et al.Jan 30arXiv

DINO-SAE is a new autoencoder that keeps both the meaning of an image (semantics) and tiny textures (fine details) at the same time.

#DINO-SAE#spherical manifold#cosine similarity alignment

What matters for Representation Alignment: Global Information or Spatial Structure?

Intermediate
Jaskirat Singh, Xingjian Leng et al.Dec 11arXiv

This paper asks whether generation training benefits more from an encoder’s big-picture meaning (global semantics) or from how features are arranged across space (spatial structure).

#representation alignment#REPA#iREPA