Random Sampling-Based Relative Radiometric Normalization

Wessel Bonnet,Turgay Celik

IEEE GEOSCIENCE AND REMOTE SENSING LETTERS(2022)

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Abstract
Relative radiometric normalization (RRN) is widely used for radiometric calibration of bitemporal multispectral images prior to any temporal analysis such as change detection. However, standard RRN methods are not robust against anomalous (or changed) pixels, which warp the calibration and decrease the spectral similarity of processed images. This letter proposes a novel random sample consensus-based RRN method, which only uses small pixel subsets to implement the linear mapping relationship for RRN, and does not require the calibration of its parameters. The experimental results show that the proposed method performs favorably against the widely used RRN methods in all metrics considered in this letter.
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Key words
Computational modeling, Radiometry, Earth, Covariance matrices, Calibration, Adaptation models, Standards, Change detection, random sample consensus (RANSAC), relative radiometric normalization (RRN)
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