We address the problem of registering synchronized color (RGB) and multi-spectral (MS) images featuring very different resolution by solving stereo matching correspondences. Purposely, we introduce a novel RGB-MS dataset framing 13 different scenes in indoor environments and providing a total of 34 image pairs annotated with semi-dense, high-resolution ground-truth labels in the form of disparity maps. To tackle the task, we propose a deep learning architecture trained in a self-supervised manner by exploiting a further RGB camera, required only during training data acquisition. In this setup, we can conveniently learn cross-modal matching in the absence of ground-truth labels by distilling knowledge from an easier RGB-RGB matching task based on a collection of about 11K unlabeled image triplets. Experiments show that the proposed pipeline sets a good performance bar (1.16 pixels average registration error) for future research on this novel, challenging task.
@article{arxiv.2206.07047,
title = {RGB-Multispectral Matching: Dataset, Learning Methodology, Evaluation},
author = {Fabio Tosi and Pierluigi Zama Ramirez and Matteo Poggi and Samuele Salti and Stefano Mattoccia and Luigi Di Stefano},
journal= {arXiv preprint arXiv:2206.07047},
year = {2022}
}
Comments
CVPR 2022, New Orleans. Project page: https://cvlab-unibo.github.io/rgb-ms-web/