4.7 Article

ResBaGAN: A Residual Balancing GAN with Data Augmentation for Forest Mapping

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSTARS.2023.3281892

Keywords

BAGAN; classification; data augmentation; multispectral; residual network; superpixels

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This study presents ResBaGAN, a GAN-based method for remote sensing image classification, which overcomes the challenges of limited labeled data and class imbalances through an advanced data augmentation framework. Compared to other machine learning methods, ResBaGAN achieves higher overall classification accuracies, particularly improving the accuracy of minority classes with F1-score enhancements up to 22%.
Although deep learning techniques are known to achieve outstanding classification accuracies, remote sensing datasets often present limited labeled data and class imbalances, two challenges to attaining high levels of accuracy. In recent years, the GAN architecture has achieved great success as a data augmentation method, driving research toward further enhancements. This work presents ResBaGAN, a GAN-based method for the classification of remote sensing images, designed to overcome the challenges of data scarcity and class imbalances by constructing an advanced data augmentation framework. This framework builds upon a GAN architecture enhanced with an autoencoder initialization and class balancing properties, a superpixel-based sample extraction procedure with traditional augmentation techniques, and an improved residual network as classifier. Experiments were conducted on large, very high-resolution multispectral images of riparian forests in Galicia, Spain, with limited training data and strong class imbalances, comparing ResBaGAN to other machine learning methods such as simpler GANs. ResBaGAN achieved higher overall classification accuracies, particularly improving the accuracy of minority classes with F1-score enhancements reaching up to 22%.

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