Semi-Supervised SAR Image Classification via Adaptive Threshold Selection
-
Published:2024-06-05
Issue:3
Volume:27
Page:319-328
-
ISSN:2636-0640
-
Container-title:Journal of the Korea Institute of Military Science and Technology
-
language:en
-
Short-container-title:J. KIMS Technol
Author:
Do Jaejun,Yoo Minjung,Lee Jaeseok,Moon Hyoi,Kim Sunok
Abstract
Semi-supervised learning is a good way to train a classification model using a small number of labeled and large number of unlabeled data. We applied semi-supervised learning to a synthetic aperture radar(SAR) image classification model with a limited number of datasets that are difficult to create. To address the previous difficulties, semi-supervised learning uses a model trained with a small amount of labeled data to generate and learn pseudo labels. Besides, a lot of number of papers use a single fixed threshold to create pseudo labels. In this paper, we present a semi-supervised synthetic aperture radar(SAR) image classification method that applies different thresholds for each class instead of all classes sharing a fixed threshold to improve SAR classification performance with a small number of labeled datasets.
Funder
Defense Acquisition Program Administration
Agency for Defense Development
Publisher
The Korea Institute of Military Science and Technology