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Conditional Generative Adversarial Networks for Data Augmentation and Adaptation in Remotely Sensed Imagery

机译:条件生成对冲网络,用于远程感测图像中的数据增强和适应

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The difficulty in obtaining labeled data relevant to a given task is among the most common and well-known practical obstacles to applying deep learning techniques to new or even slightly modified domains. The data volumes required by the current generation of supervised learning algorithms typically far exceed what a human needs to learn and complete a given task. We investigate ways to expand a given labeled corpus of remote sensed imagery into a larger corpus using Generative Adversarial Networks (GANs). We then measure how these additional synthetic data affect supervised machine learning performance on an object detection task. Our data driven strategy is to train GANs to (1) generate synthetic segmentation masks and (2) generate plausible synthetic remote sensing imagery corresponding to these segmentation masks. Run sequentially, these GANs allow the generation of synthetic remote sensing imagery complete with segmentation labels. We apply this strategy to the data set from ISPRS' 2D Semantic Labeling Contest - Potsdam, with a follow on vehicle detection task. We find that in scenarios with limited training data, augmenting the available data with such synthetically generated data can improve detector performance.
机译:获得与给定任务相关的标记数据的难度是最常见的和众所周知的实际障碍,以将深度学习技术应用于新的甚至略微修改的域。当前生成监督学习算法所需的数据量通常远远超过人类学习和完成给定任务的需要。我们调查了使用生成对冲网络(GANS)将遥感图像的给定标记的遥感图像的标记语料库扩展到更大的语料库中。然后,我们测量这些额外的合成数据如何影响对象检测任务的监督机器学习性能。我们的数据驱动策略是培训GAN到(1)生成合成分割掩模和(2)生成与这些分割掩模对应的合理的合成遥感图像。顺序运行,这些GAN允许使用分段标签完成合成遥感图像。我们将此策略应用于来自ISPRS'2D语义标签竞赛 - 波茨坦的数据集,并在车辆检测任务上进行跟随。我们发现,在具有限制培训数据的情况下,使用这种合成生成的数据增强可用数据可以提高探测器性能。

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