Radiometric precision is difficult to maintain in orbital images due to several factors (atmospheric conditions. Eartli-sun distance, detector calibration, illumination, and viewing angles). These unwanted effects must be removed for radiometric consistency among temporal images, leaving only land-leaving radiances, for optimum change detection A variety of relative radiometric correction techniques were developed for the correction or rectification of images, of the same area, through use of reference targets whose reflectance do not change significantly with time, i.e., pseudo-invariant features (PEFs). This paper proposes a new technique for radiometric normalization, which uses three sequential methods for an accurate PEFs selection: sp...
Because atmospheric effects can have a significant impact on the data obtained from multi-spectral s...
Given their low level of temporal, spatial, and spectral variability, Pseudo-Invariant Calibration S...
Detecting changes in land cover through time using remotely sensed imagery is a powerful application...
Radiometric precision is difficult to maintain in orbital images due to several factors (atmospheric...
Radiometric precision is difficult to maintain in orbital images due to several factors (atmospheric...
Multi-temporal images acquired at high spatial and temporal resolution are an important tool for det...
A new technique for performing temporal image normalization using pseudo-invariant features was inve...
[Departement_IRSTEA]DS [TR1_IRSTEA]METHODO / SYNERGIE [Departement_IRSTEA]DS [TR1_IRSTEA]METHODO / S...
A correct radiometric normalization between both images is fundamental for change detection. MAD me...
Radiometric normalization is a vital stage in the pre-processing of multi-temporal imagery. It aims ...
As sensor parameters and atmospheric conditions create uncertainties for at−sensor radiation detecti...
A radiometric normalization technique for compensating illumination and atmospheric differences betw...
International audienceWe compared the efficiency and robustness of two radiometric correction techni...
The first step of the relative radiometric normalization (RRN) of multitemporal images is to select ...
To study the structure and dynamics of environmental targets, light airborne systems are more and mo...
Because atmospheric effects can have a significant impact on the data obtained from multi-spectral s...
Given their low level of temporal, spatial, and spectral variability, Pseudo-Invariant Calibration S...
Detecting changes in land cover through time using remotely sensed imagery is a powerful application...
Radiometric precision is difficult to maintain in orbital images due to several factors (atmospheric...
Radiometric precision is difficult to maintain in orbital images due to several factors (atmospheric...
Multi-temporal images acquired at high spatial and temporal resolution are an important tool for det...
A new technique for performing temporal image normalization using pseudo-invariant features was inve...
[Departement_IRSTEA]DS [TR1_IRSTEA]METHODO / SYNERGIE [Departement_IRSTEA]DS [TR1_IRSTEA]METHODO / S...
A correct radiometric normalization between both images is fundamental for change detection. MAD me...
Radiometric normalization is a vital stage in the pre-processing of multi-temporal imagery. It aims ...
As sensor parameters and atmospheric conditions create uncertainties for at−sensor radiation detecti...
A radiometric normalization technique for compensating illumination and atmospheric differences betw...
International audienceWe compared the efficiency and robustness of two radiometric correction techni...
The first step of the relative radiometric normalization (RRN) of multitemporal images is to select ...
To study the structure and dynamics of environmental targets, light airborne systems are more and mo...
Because atmospheric effects can have a significant impact on the data obtained from multi-spectral s...
Given their low level of temporal, spatial, and spectral variability, Pseudo-Invariant Calibration S...
Detecting changes in land cover through time using remotely sensed imagery is a powerful application...