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Bridging a Gap in SAR-ATR: Training on Fully Synthetic and Testing on Measured Data

机译:桥接SAR-ATR的差距:在测量数据上完全合成和测试培训

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摘要

Obtaining measured synthetic aperture radar (SAR) data for training automatic target recognition (ATR) models can be too expensive (in terms of time and money) and complex of a process in many situations. In response, researchers have developed methods for creating synthetic SAR data for targets using electro-magnetic prediction software, which is then used to enrich an existing measured training dataset. However, this approach relies on the availability of some amount of measured data. In this work, we focus on the case of having 100% synthetic training data, while testing on only measured data. We use the SAMPLE dataset public released by AFRL, and find significant challenges to learning generalizable representations from the synthetic data due to distributional differences between the two modalities and extremely limited training sample quantities. Using deep learning-based ATR models, we propose data augmentation, model construction, loss function choices, and ensembling techniques to enhance the representation learned from the synthetic data, and ultimately achieved over 95% accuracy on the SAMPLE dataset. We then analyze the functionality of our ATR models using saliency and feature-space investigations and find them to learn a more cohesive representation of the measured and synthetic data. Finally, we evaluate the out-of-library detection performance of our synthetic-only models and find that they are nearly 10% more effective than baseline methods at identifying measured test samples that do not belong to the training class set. Overall, our techniques and their compositions significantly enhance the feasibility of using ATR models trained exclusively on synthetic data.
机译:获得测量的合成孔径雷达(SAR)用于训练自动目标识别(ATR)模型可以太昂贵(在时间和金钱方面)和许多情况下的过程中的复杂性。作为响应,研究人员已经开发了使用电磁预测软件创建针对目标的合成SAR数据的方法,然后使用该方法来丰富现有测量的训练数据集。但是,这种方法依赖于某种数量的测量数据的可用性。在这项工作中,我们专注于拥有100%合成训练数据的情况,同时仅在测量数据上进行测试。我们使用AFRL发布的示例数据集公开,并且由于两种方式之间的分布差异和极其有限的训练样本,因此从合成数据中找到了从合成数据中学习更广泛的表示的重大挑战。使用基于深度学习的ATR模型,我们提出了数据增强,模型构造,丢失功能选择,以及集合技术来增强从合成数据中学到的表示,最终在样本数据集中实现了超过95%的准确性。然后,我们使用显着性和特征空间调查分析我们的ATR模型的功能,并找到它们以学习测量和合成数据的更具凝聚力表示。最后,我们评估了唯一只有纯模型的图书馆检测性能,并发现它们比识别不属于训练类集的测量测试样本的基线方法近10%。总体而言,我们的技术及其组合物显着提高了使用专用于合成数据的ATR模型的可行性。

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