CVCGGRLGJul 5, 2020

TilinGNN: Learning to Tile with Self-Supervised Graph Neural Network

arXiv:2007.02278v12 citations
Originality Incremental advance
AI Analysis

This addresses the tiling problem for computational geometry and design applications, offering a novel neural optimization approach with incremental improvements in speed.

The authors tackled the classical tiling problem by introducing TilinGNN, a self-supervised graph neural network framework that predicts tile placements to maximize coverage without overlaps or holes, achieving runtime roughly linear to candidate tile locations and outperforming traditional combinatorial search.

We introduce the first neural optimization framework to solve a classical instance of the tiling problem. Namely, we seek a non-periodic tiling of an arbitrary 2D shape using one or more types of tiles: the tiles maximally fill the shape's interior without overlaps or holes. To start, we reformulate tiling as a graph problem by modeling candidate tile locations in the target shape as graph nodes and connectivity between tile locations as edges. Further, we build a graph convolutional neural network, coined TilinGNN, to progressively propagate and aggregate features over graph edges and predict tile placements. TilinGNN is trained by maximizing the tiling coverage on target shapes, while avoiding overlaps and holes between the tiles. Importantly, our network is self-supervised, as we articulate these criteria as loss terms defined on the network outputs, without the need of ground-truth tiling solutions. After training, the runtime of TilinGNN is roughly linear to the number of candidate tile locations, significantly outperforming traditional combinatorial search. We conducted various experiments on a variety of shapes to showcase the speed and versatility of TilinGNN. We also present comparisons to alternative methods and manual solutions, robustness analysis, and ablation studies to demonstrate the quality of our approach.

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