REDI combines supervised TF-IDF corpus scores over DINOv3 visual words with attention maps to rank patches, reducing sequence length 46.8% while raising Top-1 accuracy from 83.514% to 84.706% on ImageNet-1K.
Alvarez, Arun Mallya, Jan Kautz, and Pavlo Molchanov
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REDI: Corpus Aware Patch Ranking for DINOv3 Token Reduction
REDI combines supervised TF-IDF corpus scores over DINOv3 visual words with attention maps to rank patches, reducing sequence length 46.8% while raising Top-1 accuracy from 83.514% to 84.706% on ImageNet-1K.