Exploring Syn-to-Real Domain Adaptation for Military Target Detection
Jongoh Jeong, Youngjin Oh, Gyeongrae Nam, Jeongeun Lee, Kuk-Jin Yoon

TL;DR
This paper explores the use of photorealistic synthetic RGB data generated with Unreal Engine for military target detection, benchmarking domain adaptation methods to improve real-world detection accuracy in diverse military environments.
Contribution
It introduces a synthetic-to-real domain adaptation framework using Unreal Engine-generated data and benchmarks state-of-the-art methods on a new military dataset.
Findings
Supervised domain adaptation methods outperform unsupervised ones.
Minimal supervision yields significant accuracy improvements.
Current methods still face challenges in complex military scenarios.
Abstract
Object detection is one of the key target tasks of interest in the context of civil and military applications. In particular, the real-world deployment of target detection methods is pivotal in the decision-making process during military command and reconnaissance. However, current domain adaptive object detection algorithms consider adapting one domain to another similar one only within the scope of natural or autonomous driving scenes. Since military domains often deal with a mixed variety of environments, detecting objects from multiple varying target domains poses a greater challenge. Several studies for armored military target detection have made use of synthetic aperture radar (SAR) data due to its robustness to all weather, long range, and high-resolution characteristics. Nevertheless, the costs of SAR data acquisition and processing are still much higher than those of the…
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Taxonomy
TopicsAdvanced Neural Network Applications · Domain Adaptation and Few-Shot Learning · Advanced SAR Imaging Techniques
