凸壳端元的统计误差估计

W.W. Stoner
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引用次数: 0

摘要

用于估计光谱端元的凸壳方法存在偏差误差:混合像元偏差-如果所有可用像元都是所有m个端元的镶嵌,凸壳导出的端元光谱将偏向于真实端元光谱的质心;噪声偏置-加性高斯测量噪声使凸壳膨胀远离无噪声凸壳的质心。噪声偏差误差随着像素数的增加而增加。这种对混合像素偏差和噪声偏差的脆弱性引发了以下问题。凸包方法是否通过丢弃位于凸包内的像素来丢弃信息?是否可以对凸壳衍生端构件进行偏差估计?能否找到抗偏倚的端元估计方法?随着像素数的增加,端元估计的准确度增加了多少?随着真端元n维邻域中像素密度的增加,精度的增益是多少?下面的分析侧重于这些问题,除了端元附近的样本的数量和分布外,省略了所有噪声和失真的来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a statistical error estimate for convex-hull derived endmembers
The convex hull methods for estimating spectral endmembers are subject to bias errors: mixed pixel bias - if all of the available pixels are mosaics of all m endmembers, the convex-hull derived endmember spectra are biased towards the centroid of the true endmember spectra; noise bias - additive Gaussian measurement noise inflates the convex hull away from the centroid of the noise-free convex hull. The noise bias error grows with the pixel count. This vulnerability to mixed pixel bias and noise bias prompts the following questions. Does the convex hull method throw away information by discarding the pixels lying inside the convex hull? Can bias error estimates be developed for convex-hull derived endmembers? Can bias-resistant endmember estimation methods be found? What is the gain in accuracy of the endmember estimates with increasing pixel count? What is the gain in accuracy with increasing density of pixels in the n-dimensional neighborhood of the true endmember? The following analysis focuses on these questions by omitting all sources of noise and distortion except the number and distribution of the samples in the neighborhood of the endmember.
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