GraphLeap decouples per-layer graph construction from feature updates in Vision GNNs by using previous-layer features for the current graph, enabling pipelined FPGA acceleration with up to 95.7× CPU speedup after fine-tuning.
Adaptvig: Adaptive vision gnn with exponential decay gating
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GraphLeap: Decoupling Graph Construction and Convolution for Vision GNN Acceleration on FPGA
GraphLeap decouples per-layer graph construction from feature updates in Vision GNNs by using previous-layer features for the current graph, enabling pipelined FPGA acceleration with up to 95.7× CPU speedup after fine-tuning.