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Discriminant analysis with nonparametric estimates for subpixel detection of 3D objects in hyperspectral imagery

机译:高光谱图像中3D对象亚像素检测的非参数估计的判别分析

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The large amount of spectral information in hyperspectral imagery allows the accurate detection of subpixel objects. The use of subspace models for targets and backgrounds allows detection that is invariant to changing environmental conditions. The non-Gaussian behavior of target and background distribution residuals complicates the development of subspace-based detection methods. In this paper, we use discriminant analysis for feature extraction for separating subpixel 3D objects from cluttered backgrounds. The nonparametric estimation of distributions is used to establish the statistical models using the length and direction of residuals. Candidate subspaces are then evaluated to maximize their discriminatory power which is measured between estimated distributions of targets and backgrounds. In this context, a likelihood ratio test is used based on background and mixed statistics for subpixel detection. The detection algorithm is evaluated for HYDICE images and a number of images simulated using DIRSIG under a variety of conditions. The experimental results demonstrate accurate detection performance on these data sets.
机译:高光谱图像中的大量光谱信息允许精确地检测子像素对象。用于目标和背景的子空间模型允许检测不变于改变环境条件。目标和背景分布残差的非高斯行为使基于子空间的检测方法的发展复杂化。在本文中,我们使用判别分析来分离杂乱背景中的子像素3D对象的特征提取。分布的非参数估计用于使用残差的长度和方向来建立统计模型。然后评估候选子空间以最大化其鉴别的功率,这些功率是在估计的目标和背景的分布之间测量的。在这种情况下,基于用于子像素检测的背景和混合统计来使用似然比测试。评估检测算法用于使用DIRSIG在各种条件下模拟的多个图像。实验结果表明了这些数据集的准确检测性能。

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