Complex-Valued 2D Gaussian Representation for Computer-Generated Holography

Zhan, Yicheng, Gao, Xiangjun, Quan, Long, Akşit, Kaan

arXiv.org Artificial Intelligence 

W e propose a new hologram representation based on structured complex-valued 2D Gaussian primitives, which replaces per-pixel information storage and reduces the parameter search space by up to 10:1. T o enable end-to-end training, we develop a differentiable rasterizer for our representation, integrated with a GPU-optimized light propagation kernel in free space. Our extensive experiments show that our method achieves up to 2.5 lower VRAM usage and 50% faster optimization while producing higher-fidelity reconstructions than existing methods. W e further introduce a conversion procedure that adapts our representation to practical hologram formats, including smooth and random phase-only holograms. Our experiments show that this procedure can effectively suppress noise artifacts observed in previous methods. By reducing the hologram parameter search space, our representation enables a more scalable hologram estimation in the next-generation computer-generated holography systems.