RBSRICNN: Raw Burst Super-Resolution through Iterative Convolutional Neural Network
Rao Muhammad Umer, Christian Micheloni

TL;DR
This paper introduces RBSRICNN, an iterative neural network that enhances low-quality burst images from mobile devices by modeling the physical degradation process, outperforming existing methods in super-resolution tasks.
Contribution
It presents a novel burst super-resolution framework that integrates physical modeling, classical regularization, and deep learning with iterative refinement, unlike prior black-box approaches.
Findings
Effective in recovering high-resolution details from burst images.
Robust generalization to real low-resolution burst inputs.
Outperforms existing super-resolution methods in experiments.
Abstract
Modern digital cameras and smartphones mostly rely on image signal processing (ISP) pipelines to produce realistic colored RGB images. However, compared to DSLR cameras, low-quality images are usually obtained in many portable mobile devices with compact camera sensors due to their physical limitations. The low-quality images have multiple degradations i.e., sub-pixel shift due to camera motion, mosaick patterns due to camera color filter array, low-resolution due to smaller camera sensors, and the rest information are corrupted by the noise. Such degradations limit the performance of current Single Image Super-resolution (SISR) methods in recovering high-resolution (HR) image details from a single low-resolution (LR) image. In this work, we propose a Raw Burst Super-Resolution Iterative Convolutional Neural Network (RBSRICNN) that follows the burst photography pipeline as a whole by a…
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Taxonomy
TopicsAdvanced Image Processing Techniques · Image and Signal Denoising Methods · Advanced Vision and Imaging
