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Spatially aware supervised nonlinear dimensionality reduction for hyperspectral data

机译:高光谱数据的空间意识到监督非线性维度减少

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In this paper we study the effect of injecting spatial information of image patches directly in the process of supervised dimensionality reduction. In particular, we adopt an approach derived from the mean map kernel framework to map image patches of variable size into a reproducing kernel Hilbert space. In that space, the orthonormalized partial least squares performs supervised dimensionality reduction to a discriminant subspace. Advantages of the proposed approach are discussed by studying two well known hyperspectral image benchmarks and by comparing it to composite-kernel feature extraction framework.
机译:本文研究了在监督维数减少过程中注入图像贴片的空间信息的效果。特别是,我们采用了一种方法,从均值地图内核框架派生到将变量大小的图像斑块映射到再现内核希尔伯特空间。在该空间中,正常化的部分最小二乘对判别子空间进行监督减少。通过研究两个众所周知的高光谱图像基准测试并通过将其与复合 - 内核特征提取框架进行比较来讨论所提出的方法的优点。

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