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Hyperspectral Signal Subspace Identification in the Presence of Rare Vectors and Signal-Dependent Noise

机译:存在稀有向量和信号相关噪声的高光谱信号子空间识别

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Orthogonal subspace projection (OSP) is a powerful tool for dimensionality reduction (DR) in hyperspectral images (HSIs). In the OSP approach, the basis of the signal subspace must be estimated from the data themselves. Such estimation task is referred to as signal subspace identification (SSI). Most of the SSI methods in the literature are based on the analysis of the data second-order statistics (SOS) and have two main drawbacks: 1) They do not take into account the rare signal components (or rare vectors), 2) they assume that noise is spatially stationary. Rare vectors are those signal components that are present in pixels scarcely represented in the image and linearly independent on the signal components characterizing the rest of the image pixels. SOS-based SSI algorithms estimate the signal subspace addressing mostly the background and ignoring the presence of the rare pixels. This may be detrimental for the performance of detection algorithms when DR is adopted as a pre-processing step in small target detection applications. In this paper, a new technique for SSI in HSIs is presented. The algorithm is developed to account for both the abundant and the rare signal components. The method is derived by assuming a signal-dependent model for the noise affecting the data. This makes the SSI algorithm particularly suitable for the processing of images acquired by new generation sensors where, due to the improved sensitivity of the electronic components, noise includes a signal-dependent term. Results on simulated data are discussed, and the comparison with a recently proposed technique based on the analysis of SOS is performed. Furthermore, the results obtained by applying the SSI algorithm to a real HSI affected by signal-dependent noise are presented and discussed.
机译:正交子空间投影(OSP)是用于高光谱图像(HSI)降维(DR)的强大工具。在OSP方法中,必须从数据本身估计信号子空间的基础。这种估计任务称为信号子空间标识(SSI)。文献中的大多数SSI方法都是基于对数据二阶统计量(SOS)的分析,并且具有两个主要缺点:1)他们没有考虑稀有信号分量(或稀有矢量),2)假设噪声在空间上是固定的。稀有矢量是那些在图像中很少表示的像素中存在的信号分量,它们线性独立于表征其余图像像素的信号分量。基于SOS的SSI算法估计信号子空间主要针对背景,而忽略了稀有像素的存在。当在小目标检测应用中采用DR作为预处理步骤时,这可能对检测算法的性能有害。在本文中,提出了一种用于HSI中的SSI的新技术。开发该算法以同时考虑大量和稀有信号分量。通过假设影响信号的噪声的信号相关模型来推导该方法。这使得SSI算法特别适合处理新一代传感器获取的图像,其中由于电子元件的灵敏度提高,噪声包括信号相关项。讨论了模拟数据的结果,并与最近提出的基于SOS分析的技术进行了比较。此外,介绍并讨论了通过将SSI算法应用于受信号相关噪声影响的实际HSI所获得的结果。

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