GRCVMar 2, 2022

Differentiable Iterated Function Systems

arXiv:2203.01231v22 citationsh-index: 4Has Code
AI Analysis

This incremental work addresses a specific problem in computer graphics for researchers interested in fractal generation and optimization.

The paper tackles the inverse IFS problem by developing a differentiable rendering pipeline for Iterated Function System fractals, enabling gradient-descent optimization to generate fractals resembling target images.

This preliminary paper presents initial explorations in rendering Iterated Function System (IFS) fractals using a differentiable rendering pipeline. Differentiable rendering is a recent innovation at the intersection of computer graphics and machine learning. A fractal rendering pipeline composed of differentiable operations opens up many possibilities for generating fractals that meet particular criteria. In this paper I demonstrate this pipeline by generating IFS fractals with fixed points that resemble a given target image - a famous problem known as the \emph{inverse IFS problem}. The main contributions of this work are as follows: 1) I demonstrate (and make code available) this rendering pipeline; 2) I discuss some of the nuances and pitfalls in gradient-descent-based optimization over fractal structures; 3) I discuss best practices to address some of these pitfalls; and finally 4) I discuss directions for further experiments to validate the technique.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes