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Synthetic Data Generation to Mitigate the Low/No-Shot Problem in Machine Learning

机译:合成数据生成可缓解机器学习中的低/无问题

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The lowo-shot problem refers to a lack of available data for training deep learning algorithms. In remote sensing, complete image data sets are rare and do not always include the targets of interest. We propose a method to rapidly generate highfidelity synthetic satellite imagery featuring targets of interest over a range of solar illuminations and platform geometries. Specifically, we used the Digital Imaging and Remote Sensing Image Generation model and a custom image simulator to produce synthetic imagery of C130 aircraft in place of real Worldview-3 imagery. Our synthetic imagery was supplemented with real Worldview-3 images to test the efficacy of training deep learning algorithms with synthetic data. We deliberately chose a challenging test case of distinguishing C130s from other aircraft, or neither. Results show a negligible improvement in automatic target classification when synthetic data is supplemented with a small amount of real imagery. However, training with synthetic data alone only achieves F1-scores in line with a random classifier, suggesting that there is still significant domain mismatch between the real and synthetic datasets.
机译:低拍/无拍问题是指缺乏用于训练深度学习算法的可用数据。在遥感中,完整的图像数据集很少,并且并不总是包含感兴趣的目标。我们提出了一种快速生成高保真度合成卫星图像的方法,该图像的特征是在各种太阳光照和平台几何形状范围内具有目标关注度。具体来说,我们使用了数字成像和遥感影像生成模型以及一个自定义的影像模拟器来生成C130飞机的合成影像,以代替真实的Worldview-3影像。我们的合成图像辅以真实的Worldview-3图像,以测试使用合成数据训练深度学习算法的功效。我们特意选择了一个具有挑战性的测试案例,以区分C130与其他飞机,或两者都不区分。结果表明,当合成数据中添加少量真实图像时,自动目标分类的改善可忽略不计。但是,仅使用合成数据进行训练只能达到符合随机分类器的F1分数,这表明真实数据集和合成数据集之间仍然存在明显的域不匹配。

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