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首页> 外文期刊>Journal of defense modeling and simulatio >Outlier detection in hyperspectral imagery using closest distance to center with ellipsoidal multivariate trimming
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Outlier detection in hyperspectral imagery using closest distance to center with ellipsoidal multivariate trimming

机译:使用椭圆形多元修剪法使用离中心最近的距离在高光谱图像中进行异常检测

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In this paper we examine the efficacy of using the closest distance to center algorithm in conjunction with ellipsoidal multivariate trimming (MVT) to find outliers in a hyperspectral image. MVT is applied here as a global anomaly detector on images that are pre-processed into clusters using a technique called X-means. Under the assumption that there are no more than 5% outliers in any given cluster set, we develop a method, based upon principal component analysis preprocessing, to create a flexible threshold for determining the percentage of data to retain with MVT. Using a retention percentage that more adequately reflects the actual number of outlier-free observations allows one to form estimates of the mean and covariance matrix that more effectively decrease the effects of swamping and masking as compared to using a set percentile for retention. These ideas are tested against real and synthetically generated hyperspectral imagery.
机译:在本文中,我们研究了使用最接近中心距离算法和椭球多元修剪(MVT)来查找高光谱图像中离群值的功效。 MVT在这里用作全局异常检测器,用于使用称为X均值的技术预处理成簇的图像上。在任何给定的聚类集中不超过5%的异常值的假设下,我们开发了一种基于主成分分析预处理的方法,以创建灵活的阈值来确定通过MVT保留的数据的百分比。使用保留百分比可以更充分地反映无离群值观测值的实际数量,可以使人们形成均值和协方差矩阵的估计值,与使用固定百分位数进行保留相比,可以更有效地减少沼泽和掩盖的影响。这些想法已针对真实和合成生成的高光谱图像进行了测试。

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