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A comparison of kernel functions for intimate mixture models

机译:亲密混合模型内核功能的比较

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In previous work, kernel methods were introduced as a way to generalize the linear mixing model. This work led to a new set of algorithms that performed the unmixing of hyperspectral imagery in a reproducing kernel Hilbert space. By processing the imagery in this space different types of unmixing could be introduced - including an approximation of intimate mixtures. Whereas previous research focused on developing the mathematical foundation for kernel unmixing, this paper focuses on the selection of the kernel function. Experiments are conducted on real-world hyperspectral data using a linear, a radial-basis function, a polynomial, and a proposed physicsbased kernel. Results show which kernels provide the best ability to perform intimate unmixing.
机译:在以前的工作中,介绍了内核方法​​作为推广线性混合模型的方式。这项工作导致了一组新的算法,在再现内核希尔伯特空间中执行了超光图像的解密。通过处理此空间中的图像,可以介绍不同类型的解密 - 包括近似混合物的近似。虽然之前的研究侧重于开发内核核心的数学基础,但本文侧重于内核功能的选择。使用线性,径向基函数,多项式和建议的物理基核对现实世界高光谱数据进行实验。结果显示,哪些内核提供了执行互动解密的最佳能力。

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