Adaptive GNN for Image Analysis and Editing
Abstract
Graph neural network (GNN) has powerful representation ability, but optimal configurations of GNN are non-trivial to obtain due to diversity of graph structure and cascaded nonlinearities. This paper aims to understand some properties of GNN from a computer vision (CV) perspective. In mathematical analysis, we propose an adaptive GNN model by recursive definition, and derive its relation with two basic operations in CV: filtering and propagation operations. The proposed GNN model is formulated as a label propagation system with guided map, graph Laplacian and node weight. It reveals that 1) the guided map and node weight determine whether a GNN leads to filtering or propagation diffusion, and 2) the kernel of graph Laplacian controls diffusion pattern. In practical verification, we design a new regularization structure with guided feature to produce GNN-based filtering and propagation diffusion to tackle the ill-posed inverse problems of quotient image analysis (QIA), which recovers the reflectance ratio as a signature for image analysis or adjustment. A flexible QIA-GNN framework is constructed to achieve various image-based editing tasks, like face illumination synthesis and low-light image enhancement. Experiments show the effectiveness of the QIA-GNN, and provide new insights of GNN for image analysis and editing.
Cite
Text
Liang et al. "Adaptive GNN for Image Analysis and Editing." Neural Information Processing Systems, 2019.Markdown
[Liang et al. "Adaptive GNN for Image Analysis and Editing." Neural Information Processing Systems, 2019.](https://mlanthology.org/neurips/2019/liang2019neurips-adaptive/)BibTeX
@inproceedings{liang2019neurips-adaptive,
title = {{Adaptive GNN for Image Analysis and Editing}},
author = {Liang, Lingyu and Jin, LianWen and Xu, Yong},
booktitle = {Neural Information Processing Systems},
year = {2019},
pages = {3643-3654},
url = {https://mlanthology.org/neurips/2019/liang2019neurips-adaptive/}
}