0000000001165397

AUTHOR

Armin Moghimi

0000-0002-0455-4882

showing 1 related works from this author

Automatic Relative Radiometric Normalization of Bi-Temporal Satellite Images Using a Coarse-to-Fine Pseudo-Invariant Features Selection and Fuzzy Int…

2022

Relative radiometric normalization (RRN) is important for pre-processing and analyzing multitemporal remote sensing (RS) images. Multitemporal RS images usually include different land use/land cover (LULC) types; therefore, considering an identical linear relationship during RRN modeling may result in potential errors in the RRN results. To resolve this issue, we proposed a new automatic RRN technique that efficiently selects the clustered pseudo-invariant features (PIFs) through a coarse-to-fine strategy and uses them in a fusion-based RRN modeling approach. In the coarse stage, an efficient difference index was first generated from the down-sampled reference and target images by combining…

VDP::Teknologi: 500General Earth and Planetary Sciencesmulti-temporal satellite imagesrelative radiometric normalization (RRN)change detectionimage fusionpseudo-invariant features (PIFs)Remote Sensing
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