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A Comparative Study of Linear and Nonlinear Anomaly Detectors for Hyperspectral Imagery

机译:高光谱图像线性和非线性异常检测器的比较研究

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In this paper we implement various linear and nonlinear subspace-based anomaly detectors for hyperspectral imagery. First, a dual window technique is used to separate the local area around each pixel into two regions - an inner-window region (IWR) and an outer-window region (OWR). Pixel spectra from each region are projected onto a subspace which is defined by projection bases that can be generated in several ways. Here we use three common pattern classification techniques (Principal Component Analysis (PCA), Fisher Linear Discriminant (FLD) Analysis, and the Eigenspace Separation Transform (EST)) to generate projection vectors. In addition to these three algorithms, the well-known Reed-Xiaoli (RX) anomaly detector is also implemented. Each of the four linear methods is then implicitly defined in a high- (possibly infinite-) dimensional feature space by using a nonlinear mapping associated with a kernel function. Using a common machine-learning technique known as the kernel trick all dot products in the feature space are replaced with a Mercer kernel function defined in terms of the original input data space. To determine how anomalous a given pixel is, we then project the current test pixel spectra and the spectral mean vector of the OWR onto the linear and nonlinear projection vecotrs in order to exploit the statistical differences between the IWR and OWR pixels. Anomalies are detected if the separation of the projection of the current test pixel spectra and the OWR mean spectra are greater than a certain threshold. Comparisons are made using receiver operating characteristics (ROC) curves.
机译:在本文中,我们为高光谱图像实现了各种基于线性和非线性子空间的异常检测器。首先,使用双窗口技术将每个像素周围的局部区域分为两个区域-内部窗口区域(IWR)和外部窗口区域(OWR)。来自每个区域的像素光谱被投影到一个子空间上,该子空间由可以以多种方式生成的投影基础定义。在这里,我们使用三种常见的模式分类技术(主成分分析(PCA),Fisher线性判别式(FLD)分析和本征空间分离变换(EST))来生成投影矢量。除了这三种算法之外,还实现了著名的Reed-Xiaoli(RX)异常检测器。然后,通过使用与核函数关联的非线性映射,在高(可能是无限)维特征空间中隐式定义四种线性方法中的每一种。使用一种称为内核技巧的通用机器学习技术,将特征空间中的所有点积替换为根据原始输入数据空间定义的Mercer内核函数。为了确定给定像素的异常程度,我们然后将当前测试像素光谱和OWR的光谱均值向量投影到线性和非线性投影特征上,以利用IWR和OWR像素之间的统计差异。如果当前测试像素光谱的投影和OWR平均光谱的间距大于某个阈值,则检测到异常。使用接收器工作特性(ROC)曲线进行比较。

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