GenDR: A Generalized Differentiable Renderer

Felix Petersen, Bastian Goldlücke, Christian Borgelt, Oliver Deussen

Publikation: Beitrag in Buch/Bericht/Konferenzband/GesetzeskommentarKonferenzbeitragPeer-reviewed

Abstract

In this work, we present and study a generalized family of differentiable renderers. We discuss from scratch which components are necessary for differentiable rendering and formalize the requirements for each component. We instantiate our general differentiable renderer, which generalizes existing differentiable renderers like SoftRas and DIB-R, with an array of different smoothing distributions to cover a large spectrum of reasonable settings. We evaluate an array of differentiable renderer instantiations on the popular ShapeNet 3D reconstruction benchmark and analyze the implications of our results. Surprisingly, the simple uniform distribution yields the best overall results when averaged over 13 classes; in general, however, the optimal choice of distribution heavily depends on the task.
OriginalspracheEnglisch
TitelProc. 2022 Conference on Computer Vision and Pattern Recognition (CVPR 2022)
Seiten4002
Seitenumfang4011
PublikationsstatusVeröffentlicht - 19 Juni 2022

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