Litcius/Paper detail

Thin Cloud Removal for Remote Sensing Images Using a Physical-Model-Based CycleGAN With Unpaired Data

Yue Zi, Fengying Xie, Xuedong Song, Zhiguo Jiang, Haopeng Zhang

2021IEEE Geoscience and Remote Sensing Letters45 citationsDOI

Abstract

Thin cloud removal from remote sensing (RS) images is challenging. Recently, deep-learning-based methods have achieved excellent results using supervised training on paired image data. However, in practice, real paired image data are unavailable. Therefore, in this letter, we propose a novel thin cloud removal method, a physical-model-based CycleGAN (PM-CycleGAN), which can be trained using only unpaired data. The PM-CycleGAN training process comprises forward and backward loops. The forward loop first decomposes a cloudy image into a cloud-free image, thin cloud thickness map, and thickness coefficient using three generators. Then, it combines these three components using a physical model to reconstruct the original cloudy image to obtain the cycle consistency constraint. The backward loop first uses the physical model to synthesize a cloud-free image, thin cloud thickness map, and thickness coefficient into a cloudy image, which are then decomposed into the original three components using the three generators. Visual and quantitative comparisons against several state-of-the-art (SOTA) methods on a cloudy image dataset demonstrated the superiority of PM-CycleGAN.

Topics & Concepts

Cloud computingComputer scienceConsistency (knowledge bases)Image (mathematics)Artificial intelligenceProcess (computing)Computer visionRemote sensingPattern recognition (psychology)GeologyOperating systemAdvanced Image Fusion TechniquesImage Enhancement TechniquesRemote Sensing and LiDAR Applications