STATISTICAL METHOD TO OVERCOME OVERFITTING ISSUE IN RATIONAL FUNCTION MODELS

Author:

Alizadeh Moghaddam S. H.,Mokhtarzade M.,Alizadeh Naeini A.,Alizadeh Moghaddam S. A.

Abstract

Abstract. Rational function models (RFMs) are known as one of the most appealing models which are extensively applied in geometric correction of satellite images and map production. Overfitting is a common issue, in the case of terrain dependent RFMs, that degrades the accuracy of RFMs-derived geospatial products. This issue, resulting from the high number of RFMs’ parameters, leads to ill-posedness of the RFMs. To tackle this problem, in this study, a fast and robust statistical approach is proposed and compared to Tikhonov regularization (TR) method, as a frequently-used solution to RFMs’ overfitting. In the proposed method, a statistical test, namely, significance test is applied to search for the RFMs’ parameters that are resistant against overfitting issue. The performance of the proposed method was evaluated for two real data sets of Cartosat-1 satellite images. The obtained results demonstrate the efficiency of the proposed method in term of the achievable level of accuracy. This technique, indeed, shows an improvement of 50–80% over the TR.

Publisher

Copernicus GmbH

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2. Alleviating overfitting in transformation-interaction-rational symbolic regression with multi-objective optimization;Genetic Programming and Evolvable Machines;2023-10-20

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4. Optimization of RFM Problem Using Linearly Programed ℓ₁-Regularization;IEEE Transactions on Geoscience and Remote Sensing;2022

5. Application of PCA Analysis and QR Decomposition to Address RFM's Ill-Posedness;Photogrammetric Engineering & Remote Sensing;2020-01-01

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