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Comparative performance of fractal based and conventional methods for dimensionality reduction of hyperspectral data

机译:基于分形的方法和常规方法在高光谱数据降维方面的比较性能

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摘要

Although hyperspectral images contain a wealth of information due to its fine spectral resolution, the information is often redundant. It is therefore expedient to reduce the dimensionality of the data without losing significant information content. The aim of this paper is to show that proposed fractal based dimensionality reduction applied on high dimensional hyperspectral data can be proved to be a better alternative compared to some other popular conventional methods when similar classification accuracy is desired at a reduced computational complexity. Amongst a number of methods of computing fractal dimension, three have been applied here. The experiments have been performed on two hyperspectral data sets acquired from AVIRIS sensor.
机译:尽管由于其高光谱分辨率,高光谱图像包含大量信息,但这些信息通常是多余的。因此,在不损失大量信息内容的情况下减小数据的维数是有利的。本文的目的是表明,当需要类似的分类精度并降低计算复杂度时,与其他一些流行的常规方法相比,应用于高维高光谱数据的基于分形的降维方法可以证明是更好的选择。在许多计算分形维数的方法中,这里应用了三种。实验是对从AVIRIS传感器获取的两个高光谱数据集进行的。

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