Efficient Graphics Representation with Differentiable Indirection

Datta, Sayantan, Marshall, Carl, Nowrouzezahrai, Derek, Dong, Zhao, Li, Zhengqin

arXiv.org Artificial Intelligence 

We introduce differentiable indirection -- a novel learned primitive that employs differentiable multi-scale lookup tables as an effective substitute for traditional compute and data operations across the graphics pipeline. We demonstrate its flexibility on a number of graphics tasks, i.e., geometric and image representation, texture mapping, shading, and radiance field representation. In all cases, differentiable indirection seamlessly integrates into existing architectures, trains rapidly, and yields both versatile and efficient results.