Abstract
Monitoring nuclear activity for inaccessible areas using remote sensing technology is essential for nuclear non-proliferation. In recent years, deep learning has been actively used to detect nuclear-activity-related small objects. However, high-resolution satellite imagery containing small objects can result in class imbalance. As a result, there is a performance degradation problem in detecting small objects. Therefore, this study aims to improve detection accuracy by analyzing the effect of the ratio of small objects related to nuclear activity in the input data for the performance of the deep learning model. To this end, six case datasets with different ratios of small object pixels were generated and a U-Net model was trained for each case. Following that, each trained model was evaluated quantitatively and qualitatively using a test dataset containing various types of small object classes. The results of this study confirm that when the ratio of object pixels in the input image is adjusted, small objects related to nuclear activity can be detected efficiently. This study suggests that the performance of deep learning can be improved by adjusting the object pixel ratio of input data in the training dataset.
Original language | English |
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Pages (from-to) | 1925-1934 |
Number of pages | 10 |
Journal | Korean Journal of Remote Sensing |
Volume | 38 |
Issue number | 6 |
DOIs | |
State | Published - Dec 2022 |
Keywords
- Class imbalance
- Nuclear non-proliferation
- Semantic segmentation
- Small object
- U-Net