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Fossil Signatures Using Elemental Abundance Distributions and Bayesian Probabilistic Classification

机译:使用元素丰度分布和贝叶斯概率分类的化石特征

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Elemental abundances (C~6, N~7, O~8, Na~(11), Mg~(12), Al~(13), Si~(14), P~(15), S~(16), Cl~(17), K~(19), Ca~(20), Ti~(22)' Mn~(25), Fe~(26), and Ni~(28)) were obtained for a set of terrestrial fossils and the rock matrix surrounding them. Principal Component Analysis extracted five factors accounting for the 92.5% of the data variance, i.e. information content, of the elemental abundance data. Hierarchical Cluster Analysis provided unsupervised sample classification distinguishing fossil from matrix samples on the basis of either raw abundances or PCA input that agreed strongly with visual classification. A stochastic, non-linear Artificial Neural Network produced a Bayesian probability of correct sample classification. The results provide a quantitative probabilistic methodology for discriminating terrestrial fossils from the surrounding rock matrix using chemical information. To demonstrate the applicability of these techniques to the assessment of meteoritic samples or in situ extraterrestrial exploration, we present preliminary data on samples of the Orgueil meteorite. In both systems an elemental signature produces target classification decisions remarkably consistent with morphological classification by a human expert using only structural (visual) information. We discuss the possibility of implementing a complexity analysis metric capable of automating certain image analysis and pattern recognition abilities of the human eye using low magnification optical microscopy images and discuss the extension of this technique across multiple scales.
机译:元素丰度(C〜6,N〜7,O〜8,Na〜(11),Mg〜(12),Al〜(13),Si〜(14),P〜(15),S〜(16)分别获得了Cl〜(17),K〜(19),Ca〜(20),Ti〜(22)'Mn〜(25),Fe〜(26)和Ni〜(28))。陆地化石及其周围的岩石基质。主成分分析提取了五个因素,这些因素占元素丰度数据的数据差异(即信息含量)的92.5%。层次聚类分析基于原始丰度或PCA输入(与视觉分类强烈吻合),提供了无监督的样品分类,将化石和基质样品区分开。随机的非线性人工神经网络产生正确样本分类的贝叶斯概率。结果为使用化学信息从周围岩石基质中鉴别出陆地化石提供了一种定量概率方法。为了证明这些技术在评估陨石样品或原地外星探测中的适用性,我们提供了Orgueil陨石样品的初步数据。在这两个系统中,元素签名仅使用结构(视觉)信息即可产生与人类专家形态分类明显一致的目标分类决策。我们讨论了使用低倍光学显微镜图像来实现能够自动进行人眼某些图像分析和模式识别能力的复杂性分析指标的可能性,并讨论了该技术在多个尺度上的扩展。

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