SoftHGNN introduces differentiable soft hyperedges via learnable prototypes and top-k sparse selection to model high-order visual interactions and improve recognition accuracy.
IEEE Trans- actions on Image Processing33, 3301–3313 (2024)
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SoftHGNN: Soft Hypergraph Neural Networks for General Visual Recognition
SoftHGNN introduces differentiable soft hyperedges via learnable prototypes and top-k sparse selection to model high-order visual interactions and improve recognition accuracy.