Whitening Pre-Filters with Circular Symmetry for Anomaly Detection in Hyperspectral Imagery

H. L. Kennedy
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Abstract

The Reed-Xiaoli anomaly-detector assumes that spectral samples are distributed as a multivariate Gaussian, which is rarely the case for real data. In this paper it is shown that a spatial pre-filter, with stop- and pass-bands that are tuned to the expected texture in the scene and the scale of the target (respectively), may be used to support this approximation, by decorrelating structured background and attenuating noise. For this purpose, a novel procedure for the design of two-dimensional (2-D) spatial filters, with a finite impulse response (FIR), is proposed. Expressing the optimal spatial filter as a linear combination of a few annular basis-functions with circular symmetry, instead of many shifted unit impulses, degrades the integral-squared error (ISE) of the least-squares solution because there are fewer degrees of freedom but improves the isotropy (ISO) of the filter response. Simulation is used to show that optimal filters with a near-zero ISE and near-unity ISO (i.e. with circular symmetry) have the potential to increase the power of hyperspectral anomaly detectors, by reducing the background variance in each channel.
基于圆对称的高光谱图像异常检测白化预滤波器
Reed-Xiaoli异常检测器假设光谱样本分布为多元高斯分布,这在实际数据中很少出现。本文表明,通过去相关结构化背景和衰减噪声,可以使用空间预滤波器,其阻带和通带分别调整为场景中的预期纹理和目标的尺度,以支持这种近似。为此,提出了一种设计具有有限脉冲响应(FIR)的二维空间滤波器的新方法。将最优空间滤波器表示为具有圆形对称性的几个环形基函数的线性组合,而不是许多移位的单位脉冲,降低了最小二乘解的积分平方误差(ISE),因为自由度更少,但提高了滤波器响应的各向同性(ISO)。仿真结果表明,具有近零ISE和近统一ISO(即圆对称)的最优滤波器通过减少每个通道的背景方差,有可能增加高光谱异常检测器的功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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