Learning Propagation for Arbitrarily-structured Data

September 25, 2019 Β· Declared Dead Β· πŸ› IEEE International Conference on Computer Vision

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Authors Sifei Liu, Xueting Li, Varun Jampani, Shalini De Mello, Jan Kautz arXiv ID 1909.11237 Category cs.CV: Computer Vision Citations 0 Venue IEEE International Conference on Computer Vision Last Checked 4 months ago
Abstract
Processing an input signal that contains arbitrary structures, e.g., superpixels and point clouds, remains a big challenge in computer vision. Linear diffusion, an effective model for image processing, has been recently integrated with deep learning algorithms. In this paper, we propose to learn pairwise relations among data points in a global fashion to improve semantic segmentation with arbitrarily-structured data, through spatial generalized propagation networks (SGPN). The network propagates information on a group of graphs, which represent the arbitrarily-structured data, through a learned, linear diffusion process. The module is flexible to be embedded and jointly trained with many types of networks, e.g., CNNs. We experiment with semantic segmentation networks, where we use our propagation module to jointly train on different data -- images, superpixels and point clouds. We show that SGPN consistently improves the performance of both pixel and point cloud segmentation, compared to networks that do not contain this module. Our method suggests an effective way to model the global pairwise relations for arbitrarily-structured data.
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