Training Deep Learning Models with Hybrid Datasets for Robust Automatic Target Detection on real SAR images
In this work, we propose to tackle several challenges hindering the development of Automatic Target Detection (ATD) algorithms for ground targets in SAR images. To address the lack of representative training data, we propose a Deep Learning approach to train ATD models with synthetic target signatur...
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Zusammenfassung: | In this work, we propose to tackle several challenges hindering the
development of Automatic Target Detection (ATD) algorithms for ground targets
in SAR images. To address the lack of representative training data, we propose
a Deep Learning approach to train ATD models with synthetic target signatures
produced with the MOCEM simulator. We define an incrustation pipeline to
incorporate synthetic targets into real backgrounds. Using this hybrid dataset,
we train ATD models specifically tailored to bridge the domain gap between
synthetic and real data. Our approach notably relies on massive physics-based
data augmentation techniques and Adversarial Training of two deep-learning
detection architectures. We then test these models on several datasets,
including (1) patchworks of real SAR images, (2) images with the incrustation
of real targets in real backgrounds, and (3) images with the incrustation of
synthetic background objects in real backgrounds. Results show that the
produced hybrid datasets are exempt from image overlay bias. Our approach can
reach up to 90% of Average Precision on real data while exclusively using
synthetic targets for training. |
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DOI: | 10.48550/arxiv.2405.09588 |