The promising potential of Deep Learning for Automatic Target Recognition (ATR) on Synthetic Aperture Radar (SAR) images vanishes when considering the complexity of collecting training datasets measurements. Simulation can overcome this issue by producing synthetic training datasets. However, because of the limited representativeness of simulation, models trained in a classical way with synthetic images have limited generalization abilities when dealing with real measurement at test time. Previous works identified a set of equally promising deep-learning algorithms to tackle this issue. However, these approaches have been evaluated in a very favorable scenario with a synthetic training dataset that overfits the ground truth of the measured test data. In this work, we study the ATR problem outside of this ideal condition, which is unlikely to occur in real operational contexts. Our contribution is threefold. (1) Using the MOCEM simulator (developed by SCALIAN DS for the French MoD/DGA), we produce a synthetic MSTAR training dataset that differs significantly from the real measurements. (2) We experimentally demonstrate the limits of the state-of-the-art. (3) We show that domain randomization techniques and adversarial training can be combined to overcome this issue. We demonstrate that this approach is more robust than the state-of-the-art, with an accuracy of 75 %, while having a limited impact on computing performance during training.
翻译:考虑到收集培训数据集的复杂程度,在合成孔径雷达(SAR)图像方面深入学习自动目标识别(ATR)的有希望的潜力在收集培训数据集测量的复杂程度时消失。模拟可以通过制作合成培训数据集来克服这一问题。然而,由于模拟的代表性有限,以典型方式培训的合成图像模型在处理测试时实际测量时的概括性能力有限。以前的工作确定了一套同样有希望的深层次学习算法来解决这一问题。然而,这些方法是在一种非常有利的情景下评价的,配有一套综合培训数据集,该数据集比测量测试数据的实地真实性强。在这项工作中,我们研究这一理想条件之外的ATR问题,这不可能在实际操作环境中发生。我们的贡献有三重。 (1) 使用MOCEM模拟器(由SCALIAN DS为法国MOD/DGA开发),我们制作了一套综合的MSTAR培训数据集,该数据集与实际测量数据大不相同。(2) 我们实验性地展示了最新技术的局限性。(3) 我们表明,域随机化技术和敌对性培训比实际性培训的准确性强,我们在75号计算机学期间可以克服这一影响。