vbercy/g2tm-segmenter
Graph-Guided Token Merging (G2TM) is a lightweight one-shot module designed to eliminate redundant tokens early in the ViT architecture. It performs a single merging step after a shallow attention block, enabling all subsequent layers to operate on a compact token set. It leverages graph theory to identify groups of semantically redundant patches.
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Language
Python
License
Apache-2.0
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Last pushed
Mar 20, 2026
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