Adaptive Residual Transformation for Enhanced Feature-Based OOD Detection in SAR Imagery
Kyung-hwan Lee, Kyung-tae Kim

TL;DR
This paper introduces an adaptive residual transformation method that improves feature-based out-of-distribution detection in SAR imagery by enhancing robustness against noise, clutter, and unknown targets.
Contribution
The paper proposes transforming feature-based OOD detection into a residual-based approach, providing a more stable and robust framework for SAR imagery.
Findings
Enhanced OOD detection accuracy in SAR images.
Robustness against noise and clutter in real-world scenarios.
Improved stability across varying unknown target distributions.
Abstract
Recent advances in deep learning architectures have enabled efficient and accurate classification of pre-trained targets in Synthetic Aperture Radar (SAR) images. Nevertheless, the presence of unknown targets in real battlefield scenarios is unavoidable, resulting in misclassification and reducing the accuracy of the classifier. Over the past decades, various feature-based out-of-distribution (OOD) approaches have been developed to address this issue, yet defining the decision boundary between known and unknown targets remains challenging. Additionally, unlike optical images, detecting unknown targets in SAR imagery is further complicated by high speckle noise, the presence of clutter, and the inherent similarities in back-scattered microwave signals. In this work, we propose transforming feature-based OOD detection into a class-localized feature-residual-based approach, demonstrating…
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Taxonomy
TopicsUnderwater Acoustics Research · Image and Signal Denoising Methods · Advanced SAR Imaging Techniques
