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Comparison of kernel-based methods for spectral signature detection and classification of hyperspectral images

机译:基于核心签名检测的基于内核的比较和高光谱图像的分类

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The aim of this paper is to assess and compare the performance of two kernel-based classification methods based on two different approaches. On one hand the Support Vector Machine (SVM), which in the last years has shown excellent results for hard classification of hyperspectral data; on the other hand a detection method called Kernel Orthogonal Subspace Projection KOSP, proposed in a recent paper.1 To this aim, the widely used "Indian Pine" Aviris dataset is adopted, and a common "test protocol" has been considered: both methods have been tested adopting the one-vs-rest strategy, i.e. by performing the detection of each spectral signature (representing one of the N classes) and by considering the spectral signatures of the remaining N - 1 classes as background. The same dimensionality of the training set is also considered in both approaches.
机译:本文的目的是基于两种不同方法评估和比较两个基于内核的分类方法的性能。一方面,支持向量机(SVM),在过去几年中,对高光谱数据的硬分类表示出色的结果;另一方面,在最近的Paper1中提出了一个名为Kernel正交子空间投影投影KOSP的检测方法,采用了广泛使用的“印度松树”Aviris数据集,并考虑了常见的“测试协议”:这两种方法已经测试采用一个VS-REST策略,即通过执行每个光谱签名的检测(表示N类之一),并考虑剩余的N - 1类作为背景的频谱签名。两种方法也考虑了训练集的相同维度。

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