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Graph-based denoising and classification of hyperspectral imagery using nonlocal operators

机译:基于图形的非函数运算符的基于图形的去噪和分类

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Several studies have shown that the use of nonlocal operators can significantly remove noise and improve the quality of natural images. These operators are built on similarities between small local neighborhoods that are not necessarily spatially close, which plays a very important role in preserving the image structure, and are closely related to the kernel methods used in manifold learning and nonlinear dimension reduction. This serves as our motivation for exploring the use of nonlocal, linear, and nonlinear diffusion processes on high dimensional imagery (e.g. hyperspectral) that do not require the computation of eigenfunctions. We utilize the same iterative scheme to perform a semi-supervised multi-class classification and segmentation, only by changing the initial conditions. Furthermore, we compare the denoising performance of these algorithms with other PDE-based methods like anisotropic diffusion and compare classification accuracies for different materials on real Hyperspectral Image (HSI) cubes.
机译:几项研究表明,使用非局部运营商可以显着消除噪声并提高自然图像的质量。这些运营商基于不一定在空间上关闭的小本地社区之间的相似性,这在保留图像结构方面发挥着非常重要的作用,并且与歧管学习和非线性尺寸减小中使用的内核方法密切相关。这是我们探索在高维图像(例如高光谱)上使用非局部,线性和非线性扩散过程的动机,这些方法不需要计算特征函数。我们利用相同的迭代方案来执行半监督的多级分类和分割,只能通过改变初始条件来执行。此外,我们将这些算法与其他基于PDE的方法的去噪性能进行比较,如各向异性扩散,并比较真实高光谱图像(HSI)立方体上不同材料的分类精度。

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