Litcius/Paper detail

Logistic regression versus XGBoost for detecting burned areas using satellite images

Ana F. Militino, Harkaitz Goyena, Unai Pérez-Goya, M. D. Ugarte

2024Environmental and Ecological Statistics19 citationsDOIOpen Access PDF

Abstract

Abstract Classical statistical methods prove advantageous for small datasets, whereas machine learning algorithms can excel with larger datasets. Our paper challenges this conventional wisdom by addressing a highly significant problem: the identification of burned areas through satellite imagery, that is a clear example of imbalanced data. The methods are illustrated in the North-Central Portugal and the North-West of Spain in October 2017 within a multi-temporal setting of satellite imagery. Daily satellite images are taken from Moderate Resolution Imaging Spectroradiometer (MODIS) products. Our analysis shows that a classical Logistic regression (LR) model competes on par, if not surpasses, a widely employed machine learning algorithm called the extreme gradient boosting algorithm (XGBoost) within this particular domain.

Topics & Concepts

Gradient boostingSatelliteLogistic regressionModerate-resolution imaging spectroradiometerComputer scienceSatellite imageryBoosting (machine learning)Artificial intelligenceRegressionRandom forestRemote sensingIdentification (biology)Machine learningGeographyStatisticsMathematicsAerospace engineeringBiologyEngineeringBotanyFire effects on ecosystemsRemote Sensing in AgricultureRemote-Sensing Image Classification