This work addresses the problem of recovering lost or damaged satellite image pixels (gaps) caused by sensor processing errors or by natural phenomena like cloud presence. Such errors decrease our ability to monitor regions of interest and significantly increase the average revisit time for all satellites. This paper presents a novel neural system based on conditional deep generative adversarial networks (cGAN) optimized to fill satellite imagery gaps using surrounding pixel values and static high-resolution visual priors. Experimental results show that the proposed system outperforms traditional and neural network baselines. It achieves a normalized least absolute deviations error of 1 = 0.33 (21% and 60% decrease in error compared with th...
The dramatic increase in the number of satellites in orbit in recent years has brought progressive i...
Remote Sensing (RS) is the process of observing and measuring the physical features of an area from ...
Abstract Land‐surface observation is easily affected by the light transmission and scattering of sem...
The widespread availability of satellite images has allowed researchers to model complex systems suc...
High-resolution satellite images (HRSIs) obtained from onboard satellite linear array cameras suffer...
Satellite Imagery is one of the most widely used sources to analyze geographic features and environm...
Clouds are one of the major limitations to crop monitoring using optical satellite images. Despite a...
Clouds are one of the major limitations to crop monitoring using optical satellite images. Despite a...
Image generation and image completion are rapidly evolving fields, thanks to machine learning algori...
Sensors onboard satellite platforms with short revisiting periods acquire frequent earth observation...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
The advancements in engineering and technologies have boosted the unprecedented development in the f...
Motion blur recovery is a common method in the field of remote sensing image processing that can eff...
The dramatic increase in the number of satellites in orbit in recent years has brought progressive i...
Remote Sensing (RS) is the process of observing and measuring the physical features of an area from ...
Abstract Land‐surface observation is easily affected by the light transmission and scattering of sem...
The widespread availability of satellite images has allowed researchers to model complex systems suc...
High-resolution satellite images (HRSIs) obtained from onboard satellite linear array cameras suffer...
Satellite Imagery is one of the most widely used sources to analyze geographic features and environm...
Clouds are one of the major limitations to crop monitoring using optical satellite images. Despite a...
Clouds are one of the major limitations to crop monitoring using optical satellite images. Despite a...
Image generation and image completion are rapidly evolving fields, thanks to machine learning algori...
Sensors onboard satellite platforms with short revisiting periods acquire frequent earth observation...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
International audienceWe develop a novel method based on Deep Convolutional Networks (DCN) to automa...
The advancements in engineering and technologies have boosted the unprecedented development in the f...
Motion blur recovery is a common method in the field of remote sensing image processing that can eff...
The dramatic increase in the number of satellites in orbit in recent years has brought progressive i...
Remote Sensing (RS) is the process of observing and measuring the physical features of an area from ...
Abstract Land‐surface observation is easily affected by the light transmission and scattering of sem...