Can Graphs Help Vision SSMs See Better? · DeepSignal
Can Graphs Help Vision SSMs See Better? arXiv cs.CV · Dhruv Parikh, Anvitha Ramachandran, Haoyang Fan, Mustafa Munir, Rajgopal Kannan, Viktor Prasanna 4d ago · ~2 min· 5/13/2026· en· 1GraphScan enhances Vision SSMs by using graph-based dynamic scanning for improved feature representation.
Key Points GraphScan constructs local graphs for each token. It replaces interpolation with feature-conditioned semantic routing. Achieves state-of-the-art performance with modest computational overhead. Reader Mode is being prepared.
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Low signal — niche or repeat coverage.
Weight Score
Source authority 20% 78
Community heat 20% 0
Technical impact 30% 0
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≥75 high · 50–74 medium · <50 low
Why Featured
GraphScan's innovative approach to feature representation in Vision SSMs signals potential advancements in AI performance, crucial for developers, PMs, and investors focused on cutting-edge technology applications.