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Modular Primitives for High-Performance Differentiable Rendering

Authors :
Laine, Samuli
Hellsten, Janne
Karras, Tero
Seol, Yeongho
Lehtinen, Jaakko
Aila, Timo
Publication Year :
2020

Abstract

We present a modular differentiable renderer design that yields performance superior to previous methods by leveraging existing, highly optimized hardware graphics pipelines. Our design supports all crucial operations in a modern graphics pipeline: rasterizing large numbers of triangles, attribute interpolation, filtered texture lookups, as well as user-programmable shading and geometry processing, all in high resolutions. Our modular primitives allow custom, high-performance graphics pipelines to be built directly within automatic differentiation frameworks such as PyTorch or TensorFlow. As a motivating application, we formulate facial performance capture as an inverse rendering problem and show that it can be solved efficiently using our tools. Our results indicate that this simple and straightforward approach achieves excellent geometric correspondence between rendered results and reference imagery.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2011.03277
Document Type :
Working Paper