In this work, we deal with the problem of atmospheric compensation (AC) of hyperspectral data collected in the visible and near-infrared (VNIR) spectral range. We propose the “learning-based” approach which uses artificial intelligence algorithms to directly estimate the spectral reflectance from the observed at-sensor radiance image. It uses a parametric regressor whose parameters are learned by means of a strategy based on synthetic data. Such data are generated taking into account 1) the radiative transfer in the atmosphere; 2) the variability of the surface spectral reflectance; and 3) the effects of signal-dependent random noise and spectral miscalibration errors. According to this general framework, we propose a specific m...
Most Earth observation hyperspectral imagery (HSI) detection and identification algorithms depend cr...
This paper deals with atmospheric correction in hyperspectral data acquired in the long-wave infrare...
One of the initial steps in the preprocessing of remote sensing data is the atmospheric correction o...
In this work, we deal with the problem of atmospheric compensation (AC) of hyperspectral data colle...
In this work, the Learning-Based Approach to Atmospheric Compensation (LBAC) of hyperspectral data p...
Atmospheric compensation (AC) allows the retrieval of the reflectance from the measured at-sensor ra...
Atmospheric compensation is a fundamental and critical step for quantitative exploitation of hypersp...
Many methods based on radiative-transfer models and empirical approaches with prior knowledge have b...
Abstract Background Vegetation spectral reflectance obtained with hyperspectral imaging (HSI) offer ...
Atmospheric compensation of long-wave infrared (LWIR) hyperspectral imagery is investigated in this ...
In this work we extend the recently proposed Learning-Based approach to Atmospheric Compensation (LB...
■ Hyperspectral imaging sensors are used to detect and identify diverse surface materials, topograph...
Hyperspectral target detection promises new operational advantages, with increasing instrument spect...
Abstract Optical imaging satellites, such as SPOT and Cartosat‐2S, provide visible/near infrared (VN...
Estimation of the total column water vapor (CWV) content of the atmosphere plays an important role i...
Most Earth observation hyperspectral imagery (HSI) detection and identification algorithms depend cr...
This paper deals with atmospheric correction in hyperspectral data acquired in the long-wave infrare...
One of the initial steps in the preprocessing of remote sensing data is the atmospheric correction o...
In this work, we deal with the problem of atmospheric compensation (AC) of hyperspectral data colle...
In this work, the Learning-Based Approach to Atmospheric Compensation (LBAC) of hyperspectral data p...
Atmospheric compensation (AC) allows the retrieval of the reflectance from the measured at-sensor ra...
Atmospheric compensation is a fundamental and critical step for quantitative exploitation of hypersp...
Many methods based on radiative-transfer models and empirical approaches with prior knowledge have b...
Abstract Background Vegetation spectral reflectance obtained with hyperspectral imaging (HSI) offer ...
Atmospheric compensation of long-wave infrared (LWIR) hyperspectral imagery is investigated in this ...
In this work we extend the recently proposed Learning-Based approach to Atmospheric Compensation (LB...
■ Hyperspectral imaging sensors are used to detect and identify diverse surface materials, topograph...
Hyperspectral target detection promises new operational advantages, with increasing instrument spect...
Abstract Optical imaging satellites, such as SPOT and Cartosat‐2S, provide visible/near infrared (VN...
Estimation of the total column water vapor (CWV) content of the atmosphere plays an important role i...
Most Earth observation hyperspectral imagery (HSI) detection and identification algorithms depend cr...
This paper deals with atmospheric correction in hyperspectral data acquired in the long-wave infrare...
One of the initial steps in the preprocessing of remote sensing data is the atmospheric correction o...