学习理解地面真实度较弱和不可靠的对地观测图像

R. C. Daudt, Adrien Chan-Hon-Tong, B. L. Saux, Alexandre Boulch
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引用次数: 3

摘要

在本文中,我们讨论了在监督学习中使用不精确和不准确的基础真值的问题。为了利用大量的地球观测数据来训练算法,人们经常不得不使用未经仔细评估的地面真实值。我们同时解决培训和评估的问题。我们首先提出了一种弱监督方法来训练变化分类器,该方法能够检测航拍图像中像素级的变化。然后,我们提出了一种数据中毒方法,即使在唯一可用的基本事实与现实不匹配的情况下,也可以从分类器中获得对准确度的可靠估计。两者都是根据实际土地利用和土地覆盖应用进行评估的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to Understand Earth Observation Images with Weak and Unreliable Ground Truth
In this paper we discuss the issues of using inexact and inaccurate ground truth in the context of supervised learning. To leverage large amounts of Earth observation data for training algorithms, one often has to use ground truth which was not been carefully assessed. We address both the problems of training and evaluation. We first propose a weakly supervised approach for training change classifiers which is able to detect pixel-level changes in aerial images. We then propose a data poisoning approach to get a reliable estimate of the accuracy that can be expected from a classifier, even when the only ground-truth available does not match the reality. Both are assessed on practical land use and land cover applications.
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