Graph explorer

Back-Projection Pipeline

We propose a simple extension of residual networks that works simultaneously in multiple resolutions. Our network design is inspired by the iterative back-projection algorithm but seeks the more difficult task of learning how to enhance images. Compared to similar approaches, we propose a novel solution to make back-projections run in multiple resolutions by using a data pipeline workflow. Features are updated at multiple scales in each layer of the network. The update dynamic through these layers includes interactions between different resolutions in a way that is causal in scale, and it is represented by a system of ODEs, as opposed to a single ODE in the case of ResNets. The system can be used as a generic multi-resolution approach to enhance images. We test it on several challenging tasks with special focus on super-resolution and raindrop removal. Our results are competitive with state-of-the-arts and show a strong ability of our system to learn both global and local image features.

6 nodes5 linksoverview previewBack-Projection Pipeline
6 nodes5 links
Back-Projection Pipeline6 visible / 6 total nodes / 11 links
Co-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipAuthorshipAuthorshipAuthorshipAuthorshipTopic signalWBack-Projection Pipelinepreprint / 2021APablo Navarrete MicheliniResearcherAHanwen LiuResearcherAYunhua LuResearcherAXingqun JiangResearcherTeess.IV7337 works
PaperSignal 105 links

Back-Projection Pipeline

preprint / 2021

Open