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Label Noise Robust Classification Of Hyperspectral Data

机译:高光谱数据的标签噪声稳健分类

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摘要

Supervised classification on remotely sensed data is a classical method to detect objects automatically and to update topo-graphical datasets. To train the classifier, already labeled image data are needed. The training labels are typically created manually for parts of the given data, which is time-consuming and thus costly. Another approach would be to use the labels from an old and outdated dataset, called map, to avoid manual effort. Due to changes over time some of the labels might be wrong, and thus the used classifier has to be able to deal with that. In this paper, we apply label noise robust classification on two hyperspectral datasets using a simulated outdated map for training.
机译:遥感数据的监督分类是一种自动检测对象并更新地形图数据集的经典方法。为了训练分类器,需要已经标记的图像数据。训练标签通常是针对给定数据的一部分手动创建的,这很耗时,因此成本很高。另一种方法是使用来自旧的过时数据集的标签(称为地图),以避免人工操作。由于随时间的变化,某些标签可能是错误的,因此使用的分类器必须能够处理该问题。在本文中,我们使用模拟的过时地图对训练中的两个高光谱数据集应用标签噪声鲁棒分类。

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