基于自适应算法的高光谱图像混合背景异常检测

A. Orfaig, S. Rotman, D. Blumberg
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引用次数: 2

摘要

高光谱数据中的异常检测已被考虑用于各种应用。异常检测的主要目的是检测光谱与背景光谱差异较大的像元向量(即光谱向量)。在异常检测中,不假设目标的先验知识。在本文中,我们将提出一种新的基于SRX(分段RX)算法的异常检测方法,重点关注片段之间的边缘。该方法结合了我们开发的一种快速收敛的自适应算法,用于估计相邻段的混合系数以拟合边缘像素的光谱。实现它允许我们重建它的均值向量和协方差矩阵,并在局部操作RX算法。该算法是对两种算法(最陡下降法和牛顿法)的融合和改进;它结合了每种方法的优点,同时消除了它们的缺点,因此其收敛速度快且稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Anomaly detection using an adaptive algorithm for estimating mixtures of backgrounds in hyperspectral images
Anomaly detection in hyperspectral data has been considered for various applications. The main purpose of anomaly detection is to detect pixel vectors (i.e. spectral vectors) whose spectra differ significantly from the background spectra. In anomaly detection, no prior knowledge about the target is assumed. In this paper we will present a new method for anomaly detection based on the SRX (Segmented RX) algorithm, with an emphasis on the edges between the segments. This method incorporates an adaptive algorithm with fast convergence which we developed for estimating the mixing coefficients of adjacent segments to fit the spectra of edge pixels. Achieving it allows us to reconstruct its mean vector and its covariance matrix, and operate the RX algorithm locally. The developed algorithm is a fusion and improvement of two algorithms (Steepest Descent and Newton's Method); it combines the benefits of each method while eliminating their drawbacks, so its convergence is fast and stable.
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