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DOMAIN ADAPTATION WITH CYCLEGAN FOR CHANGE DETECTION IN THE AMAZON FOREST

机译:域适应亚马逊森林中的变更检测

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Deep learning classification models require large amounts of labeled training data to perform properly, but the production of reference data for most Earth observation applications is a labor intensive, costly process. In that sense, transfer learning is an option to mitigate the demand for labeled data. In many remote sensing applications, however, the accuracy of a deep learning-based classification model trained with a specific dataset drops significantly when it is tested on a different dataset, even after fine-tuning. In general, this behavior can be credited to the domain shift phenomenon. In remote sensing applications, domain shift can be associated with changes in the environmental conditions during the acquisition of new data, variations of objects’ appearances, geographical variability and different sensor properties, among other aspects. In recent years, deep learning-based domain adaptation techniques have been used to alleviate the domain shift problem. Recent improvements in domain adaptation technology rely on techniques based on Generative Adversarial Networks (GANs), such as the Cycle-Consistent Generative Adversarial Network (CycleGAN), which adapts images across different domains by learning nonlinear mapping functions between the domains. In this work, we exploit the CycleGAN approach for domain adaptation in a particular change detection application, namely, deforestation detection in the Amazon forest. Experimental results indicate that the proposed approach is capable of alleviating the effects associated with domain shift in the context of the target application.
机译:深度学习分类模型需要大量标记的训练数据来正确执行,但大多数地球观测应用的参考数据的生产是劳动密集型的,昂贵的过程。从这种意义上讲,转移学习是一种减轻标记数据需求的选项。然而,在许多遥感应用中,即使在微调之后,当在不同的数据集中测试时,使用特定数据集训练的基于深度学习的分类模型的准确性也会显着下降。通常,这种行为可以归功于域移位现象。在遥感应用中,在获取新数据期间,域移位可以与环境条件的变化相关联,对象的外观变化,地理变异性和不同传感器属性等方面。近年来,基于深度学习的域适应技术已被用于缓解域移位问题。域适应技术的最新改进依赖于基于生成的对抗网络(GANS)的技术,例如循环一致的生成对抗网络(Cixcargan),其通过在域之间学习非线性映射函数来适应不同域的图像。在这项工作中,我们利用了特定变化检测应用中的域适应的Cycleangan方法,即亚马逊森林中的砍伐森林检测。实验结果表明,该方法能够减轻目标应用范围内与域移相关的效果。

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