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Space-adaptive spectral analysis of hyperspectral imagery

机译:高光谱影像的空间自适应光谱分析

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Aim of this paper is investigating the use of overcomplete bases for the representation of hyperspectral image data. The idea is building an overcomplete basis starting from several orthogonal or non-orthogonal bases and picking up a set of vectors fitting pixel spectra to the largest extent. A common technique to select the most representative elements of a signal is Matching Pursuit (MP). This technique is analogous to the Mixed-Transform Analysis (MTA) and has been successfully used to represent speech and images. The main problems in using MTA for hyperspectral data analysis are: (1) choice of bases that potentially convey the maximum of spectral information; (2) calculation of projections in the non-orthogonal representation. A large variety of bases has been taken into consideration, including several types of wavelets with compact support. An iterative approach is used to find the coefficients of the linear combination of vectors, so that the residual function has minimum energy. The computational cost is extremely high when a large set of data is to be processed. To encompass computational constraints, a reduced data set (RDS) is produced by applying the projection pursuit (PP) technique to each of the square blocks in which the input hyperspectral image is partitioned based on a spatial homogeneity criterion. Then MTA is applied to the RDS to find out a non-orthogonal frame capable to represent such data through waveforms selected to best match spectral features. Experimental results carried out on the hyperspectral data AVIRIS Moffett Field '97 show the joint use of different bases, including wavelet bases, may be preferable to a unique orthogonal basis in terms of energy compaction, as well as of significance of the outcome components.
机译:本文的目的是研究使用超完备的基础来表示高光谱图像数据。这个想法是从几个正交或非正交的基础开始,建立一个不完全的基础,并挑选出最大程度适合像素光谱的一组矢量。选择信号中最具代表性的元素的常用技术是匹配追踪(MP)。此技术类似于混合变换分析(MTA),已成功用于表示语音和图像。使用MTA进行高光谱数据分析的主要问题是:(1)选择可能传达最大光谱信息的碱基; (2)计算非正交表示中的投影。已经考虑了各种各样的基础,包括几种类型的具有紧凑支撑的小波。使用迭代方法来找到向量的线性组合的系数,从而使残差函数具有最小的能量。当要处理大量数据时,计算成本非常高。为了包含计算约束,通过将投影追踪(PP)技术应用于基于空间均一性标准对输入高光谱图像进行分区的每个正方形块,可以生成精简数据集(RDS)。然后将MTA应用于RDS,以找出能够通过选择与频谱特征最匹配的波形表示此类数据的非正交帧。在高光谱数据AVIRIS Moffett Field '97上进行的实验结果表明,在能量压缩方面以及结果分量的重要性方面,包括小波基在内的不同基数的联合使用可能优于唯一的正交基数。

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