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CloudSegNet: A Deep Network for Nychthemeron Cloud Image Segmentation

About

We analyze clouds in the earth's atmosphere using ground-based sky cameras. An accurate segmentation of clouds in the captured sky/cloud image is difficult, owing to the fuzzy boundaries of clouds. Several techniques have been proposed that use color as the discriminatory feature for cloud detection. In the existing literature, however, analysis of daytime and nighttime images is considered separately, mainly because of differences in image characteristics and applications. In this paper, we propose a light-weight deep-learning architecture called CloudSegNet. It is the first that integrates daytime and nighttime (also known as nychthemeron) image segmentation in a single framework, and achieves state-of-the-art results on public databases.

Soumyabrata Dev, Atul Nautiyal, Yee Hui Lee, Stefan Winkler• 2019

Related benchmarks

TaskDatasetResultRank
Cloud SegmentationSWINSEG Nighttime
Precision93.2
7
Cloud SegmentationSWIMSEG Daytime
Precision94.1
7
Cloud SegmentationSWINySEG Day + Night Time
Precision93.1
7
Cloud SegmentationCloud Segmentation Dataset
AUC89
6
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