Improvement of SAR Target Classification Using GAN-based Data Augmentation and Wavelet Transformation

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초록

Synthetic aperture radar (SAR) is a powerful tool in remote sensing. Unlike optical image devices, SAR can observe target regions regardless of weather conditions, such as clouds, fog, and darkness. In this article, we consider the SAR target classification problems when available SAR images having target labels are limited. To improve the classification performance, we propose a learning technique combining data augmentation using generative adversarial network (GAN) models and wavelet transformation. We conduct experiments to investi-gate the improvement of the proposed learning technique with the SAR images from the moving and stationary target acquisition and recognition data. From our experiment results, the proposed learning technique combining GAN-based data augmentation and wavelet transformation has shown greater improvement in SAR image classification when the available learning data is scarce. © 2024, Military Operations Research Society.

제목
Improvement of SAR Target Classification Using GAN-based Data Augmentation and Wavelet Transformation
저자
Kim, JaeohHan, ChulheeLee, JungmanYun, Woo-SeopLee, SeojinYang, TaehoonYu, DonghyeonJo, Seongil
DOI
10.5711/1082598329391
발행일
2024
유형
Article
저널명
Military Operations Research
29
3
페이지
91 ~ 103