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首页> 外文期刊>Forensic science international >The classification and discrimination of glass fragments using non destructive energy dispersive X-ray microfluorescence.
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The classification and discrimination of glass fragments using non destructive energy dispersive X-ray microfluorescence.

机译:使用非破坏性能量色散X射线微荧光对玻璃碎片进行分类和判别。

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摘要

Frequency of analytical characteristics is best estimated on glass recovered at random. However, as such data were not available to us, we decided to use control windows for this estimation. In order to use such a database, one has to establish that the recovered fragment comes from a window. Therefore, elemental analysis was used both for classification and discrimination of glass fragments. Several articles have been published on the subject, but most methods alter the glass sample. The use of non destructive energy dispersive X-ray microfluorescence (microXRF) for the analysis of small glass fragments has been evaluated in this context. The refractive index (RI) has also been measured in order to evaluate the complementarity of techniques.Classification of fragments has been achieved using Fisher's linear discriminant analysis (LDA) and neural networks (NN). Discrimination was based on Hotelling's T(2) test. Only pairs that were not differentiated by RI followed by the Welch test were studied.The results show that neural network and linear discriminant analysis using qualitative and semi-quantitative data establishes a classification of glass specimens with a high degree of reliability.For discrimination, 119 windows collected from crime scene were compared: using RI it was possible to distinguish 6892 pairs. Out of 129 remaining pairs, 112 were distinguished by microXRF.
机译:最好在随机回收的玻璃上估算分析特征的频率。但是,由于我们无法获得这些数据,因此我们决定使用控制窗口进行此估算。为了使用这样的数据库,必须确定恢复的片段来自一个窗口。因此,将元素分析用于玻璃碎片的分类和鉴别。关于该主题已经发表了几篇文章,但是大多数方法都会改变玻璃样品。在这种情况下,已经评估了使用非破坏性能量色散X射线微荧光(microXRF)分析小玻璃碎片。为了评估技术的互补性,还测量了折射率(RI)。使用Fisher线性判别分析(LDA)和神经网络(NN)实现了片段的分类。歧视基于Hotelling的T(2)检验。结果表明,使用定性和半定量数据进行的神经网络和线性判别分析建立了具有高度可靠性的玻璃标本分类方法,用于区分,119比较了从犯罪现场收集的窗户:使用RI可以区分6892对。在剩余的129对中,有112条通过microXRF进行了区分。

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