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Iterative active learning with diffusion geometry for hyperspectral images

机译:高光谱图像的扩散几何迭代主动学习

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We propose an active learning algorithm for labeling hyperspectral images (HSI). Pixels with ambiguous class affinity are iteratively estimated using geometric and statistical properties of the data. These pixels are then labeled with ground truth data, yielding a small but potent set of labeled pixels, which are consequently used to label the remaining data. The proposed method enjoys quasilinear complexity in the number of sample pixels, as well as competitive empirical performance on real HSI. Substantial improvement in labeling accuracy compared to unsupervised learning and existing active learning methods is observed with just a few well-selected label queries.
机译:我们提出了一种用于标记高光谱图像(HSI)的主动学习算法。使用数据的几何和统计属性迭代地估计具有模糊类关联的像素。然后用地面真理数据标记这些像素,产生小但有效的标记像素集,从而用于标记剩余数据。该方法在样品像素的数量中享有Quasilinear复杂性,以及真实HSI的竞争性经验性能。与未经监督的学习和现有的活动学习方法相比,标签精度的显着提高是只有几个选择的标签查询。

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