GW-HGNN applies heterogeneous graph learning to balance image fidelity and transmission costs in drone-based 3D scene reconstruction, outperforming prior methods on rendering metrics while running 100x faster than MOSEK.
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LAGS: Low-Altitude Gaussian Splatting with Groupwise Heterogeneous Graph Learning
GW-HGNN applies heterogeneous graph learning to balance image fidelity and transmission costs in drone-based 3D scene reconstruction, outperforming prior methods on rendering metrics while running 100x faster than MOSEK.