首页> 外文会议>IEEE International Conference on Acoustics, Speech, and Signal Processing >ON THE ENDMEMBER IDENTIFIABILITY OF CRAIG'S CRITERION FOR HYPERSPECTRAL UNMIXING: A STATISTICAL ANALYSIS FOR THREE-SOURCE CASE
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ON THE ENDMEMBER IDENTIFIABILITY OF CRAIG'S CRITERION FOR HYPERSPECTRAL UNMIXING: A STATISTICAL ANALYSIS FOR THREE-SOURCE CASE

机译:关于Craig对高光谱解密的终止标准的终结性:三源案例的统计分析

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Hyperspectral unmixing (HU) is a process to extract the underlying endmember signatures (or simply endmembers) and the corresponding proportions (abundances) from the observed hyperspectral data cloud. The Craig's criterion (minimum volume simplex enclosing the data cloud) and the Winter's criterion (maximum volume simplex inside the data cloud) are widely used for HU. For perfect identifiability of the endmembers, we have recently shown in [1] that the presence of pure pixels (pixels fully contributed by a single endmember) for all endmembers is both necessary and sufficient condition for Winter's criterion, and is a sufficient condition for Craig's criterion. A necessary condition for endmember identifiability (EI) when using Craig's criterion remains unsolved even for three-endmember case. In this work, considering a three-endmember scenario, we endeavor a statistical analysis to identify a necessary and statistically sufficient condition on the purity level (a measure of mixing levels of the endmembers) of the data, so that Craig's criterion can guarantee perfect identification of endmembers. Precisely, we prove that a purity level strictly greater than 1/sqroot is necessary for EI, while the same is sufficient for EI with probability-1. Since the presence of pure pixels is a very strong requirement which is seldom true in practice, the results of this analysis foster the practical applicability of Craig's criterion over Winter's criterion, to real-world problems.
机译:Hyperspectral Unmixing(HU)是一个过程,用于从观察到的超光数据云中提取底层的终点签名(或简单的endmembers)和相应的比例(丰富)。 CRAIG的标准(封闭数据云的最小卷Simplex)和冬季标准(数据云内的最大卷滑)广泛用于胡。对于EndMembers的完美可识别性,我们最近在[1]中显示了所有endmembers的纯片像素(完全贡献的像素)的存在是冬季标准的必要条件,并且是克雷格的充分条件标准。使用CRAIG的标准时,终止状态的必要条件(EI)即使对于三个终端议案而仍未解决。在这项工作中,考虑到三个终点的情景,我们努力统计分析,以确定数据的纯度水平(衡量数据的混合水平)的必要和统计上的条件,以便克雷格的标准可以保证完美的识别endmembers。精确地,我们证明EI严格大于1 / SQROOT的纯度水平,而具有概率-1的EI也是足够的。由于纯像素的存在是在实践中很少的非常强烈的要求,这分析结果促进了克雷格对冬季标准的实际适用性,以实现现实世界问题。

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