Published January 1, 2018
| Version v1
Conference paper
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Classification-Based and Rule-Based Methods for Cloud Detection in High Resolution Satellite Imagery
- 1. TUBITAK Uzay Teknol Arastirma Enstitusu, Ankara, Turkey
Description
Cloud cover ratio in electro-optical satellite images is a critical factor for the usability of the images. First step to assess the usability of satellite images is cloud detection for the estimation of a cloud coverage from the analyses and/or removing the clouds from images. Satellite imagery providers supply these cloud ratio and maps for their satellite imagery. In this work, classification-based and rule-based methods are compared for cloud detection in high-resolution satellite imagery. In particular, test images consist of different scenarios such as regular, stereo and cloudy imagery. From the experiments, it has been observed that deep learning-based methods could achieve significant cloud detection performances.
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