Single Image Cloud Detection via Multi-Image Fusion (2007.15144v1)
Abstract: Artifacts in imagery captured by remote sensing, such as clouds, snow, and shadows, present challenges for various tasks, including semantic segmentation and object detection. A primary challenge in developing algorithms for identifying such artifacts is the cost of collecting annotated training data. In this work, we explore how recent advances in multi-image fusion can be leveraged to bootstrap single image cloud detection. We demonstrate that a network optimized to estimate image quality also implicitly learns to detect clouds. To support the training and evaluation of our approach, we collect a large dataset of Sentinel-2 images along with a per-pixel semantic labelling for land cover. Through various experiments, we demonstrate that our method reduces the need for annotated training data and improves cloud detection performance.
- Scott Workman (20 papers)
- M. Usman Rafique (4 papers)
- Hunter Blanton (10 papers)
- Connor Greenwell (7 papers)
- Nathan Jacobs (70 papers)