GRCVApr 28

8DNA: 8D Neural Asset Light Transport by Distribution Learning

arXiv:2604.2512930.9h-index: 6
AI Analysis

For computer graphics, it enables high-fidelity rendering of complex light transport with near-field lighting, improving over prior 6D methods.

8DNA learns full 8D light transport for pre-baking global illumination effects in 3D assets, enabling accurate rendering under near-field illumination with reduced variance and fast inference.

High-fidelity 3D assets exhibit intriguing global illumination effects like subsurface scattering, glossy interreflections, and fine-scale fiber scatterings, which often involve long scattering paths that are expensive to simulate. We introduce 8D neural assets (8DNA) to pre-bake these light transport effects into neural representations. Unlike prior methods that assume far-field lighting and precompute light transport into 6D functions, 8DNA learns the full 8D light transport, enabling accurate rendering under near-field illumination. Our training leverages a distribution-learning formulation that learns light transport from forward path-traced samples, which produces less optimization variance with lower training budget than the prior regression-based approaches. Experiments show our 8DNA rendering closely matches path-traced results under various scene configurations, yet it achieves improved variance reduction and fast inference speeds on challenging assets.

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