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Stability of Dimensionality Reduction Methods Applied on Artificial Hyperspectral Images

机译:应用于人工高光谱图像的降维方法的稳定性

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Dimensionality reduction is a big challenge in many areas. In this research we address the problem of high-dimensional hyperspectral images in which we are aiming to preserve its information quality. This paper introduces a study stability of the non parametric and unsuper-vised methods of projection and of bands selection used in dimensionality reduction of different noise levels determined with different numbers of data points. The quality criteria based on the norm and correlation are employed obtaining a good preservation of these artificial data in the reduced dimensions. The added value of these criteria can be illustrated in the evaluation of the reduction's performance, when considering the stability of two categories of bands selection methods and projection methods. The performances of the method are verified on artificial data sets for validation. An hybridization for a better stability is proposed in this paper, Band Clustering (BandClust) with Multidimensional Scaling (MDS) for dimensionality reduction. Examples are given to demonstrate the hybridization originality and relevance(BandClust/MDS) of the analysis carried out in this paper.
机译:在许多领域,降维是一个巨大的挑战。在这项研究中,我们解决了高维高光谱图像的问题,我们旨在保留其信息质量。本文介绍了一种非参数,无监督的投影方法和频带选择的研究稳定性,该方法用于减少由不同数量的数据点确定的不同噪声级的降维。采用基于规范和相关性的质量标准,可以在缩小的尺寸中很好地保存这些人工数据。当考虑两类频带选择方法和投影方法的稳定性时,这些标准的增加值可以在降低性能的评估中得到说明。该方法的性能在人工数据集上进行了验证。本文提出了一种具有更好稳定性的杂交方法,即带簇聚类(BandClust)和多维标度(MDS)来降低维数。举例说明了杂交分析的独创性和相关性(Ba​​ndClust / MDS)。

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