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A Cycle Gan Approach for Heterogeneous Domain Adaptation in Land Use Classification

机译:土地利用分类中异质域改编的循环GAN方法

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In the field of remote sensing and more specifically in Earth Observation, new data are available every day, coming from different sensors. Leveraging on those data in classification tasks comes at the price of intense labelling tasks that are not realistic in operational settings. While domain adaptation could be useful to counterbalance this problem, most of the usual methods assume that the data to adapt are comparable (they belong to the same metric space), which is not the case when multiple sensors are at stake. Heterogeneous domain adaptation methods are a particular solution to this problem. We present a novel method to deal with such cases, based on a modified cycleGAN version that incorporates classification losses and a metric space alignment term. We demonstrate its power on a land use classification tasks, with images from both Google Earth and Sentinel-2.
机译:在遥感领域,更具体地在地球观察中,每天都可以获得新数据,来自不同的传感器。在分类任务中利用这些数据,以激烈的标签任务价格在操作环境中不得立实。虽然域适应可能是有用的抵消此问题,但大多数通常的方法都假定要适应的数据是可比的(它们属于相同的公制空间),而多个传感器是股权的情况并非如此。异构域适应方法是对此问题的特定解决方案。我们提出了一种对处理此类案例的新方法,基于修改的Cyclegan版本,该方法包含分类损失和度量空间对齐项。我们展示其对土地使用分类任务的电源,其中来自Google地球和Sentinel-2的图像。

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