Sky/cloud images obtained from ground-based sky-cameras are usually captured using a fish-eye lens with a wide field of view. However, the sky exhibits a large dynamic range in terms of luminance, more than a conventional camera can capture. It is thus difficult to capture the details of an entire scene with a regular camera in a single shot. In most cases, the circumsolar region is over-exposed, and the regions near the horizon are under-exposed. This renders cloud segmentation for such images difficult. In this paper, we propose HDRCloudSeg -- an effective method for cloud segmentation using High-Dynamic-Range (HDR) imaging based on multi-exposure fusion. We describe the HDR image generation process and release a new database to the community for benchmarking. Our proposed approach is the first using HDR radiance maps for cloud segmentation and achieves very good results.
@article{arxiv.1803.01071,
title = {High-Dynamic-Range Imaging for Cloud Segmentation},
author = {Soumyabrata Dev and Florian M. Savoy and Yee Hui Lee and Stefan Winkler},
journal= {arXiv preprint arXiv:1803.01071},
year = {2018}
}
Comments
Published in Atmospheric Measurement Techniques (AMT), 2018