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基于元素组成和折射率的玻璃碎片分类

Classification of glass fragments based on elemental composition and refractive index.

作者信息

Zadora Grzegorz

机构信息

Institute of Forensic Research, Westerplatte 9, 31-033 Krakow, Poland.

出版信息

J Forensic Sci. 2009 Jan;54(1):49-59. doi: 10.1111/j.1556-4029.2008.00905.x. Epub 2008 Nov 6.

Abstract

The aim of this study was to assess the efficiency of likelihood ratio (LR)-based measures when they are applied to solving various classification problems for glass objects which are described by elemental composition, and refractive index (RI) values, and compare LR-based methods to other classification methods such as support vector machines (SVM) and naïve Bayes classifiers (NBC). One hundred and fifty-three glass objects (23 building windows, 25 bulbs, 32 car windows, 57 containers, and 16 headlamps) were analyzed by scanning electron microscopy coupled with an energy dispersive X-ray spectrometer. Refractive indices for building and car windows were measured before (RI(b)), and after (RI(a)) an annealing process. The proposed scheme for glass fragment(s) classification demonstrates some efficiency, although the classification of car windows (c) and building windows (w) must be treated carefully. This is because of their very similar elemental content. However, a combination of elemental content and information on the change in RI during annealing (DeltaRI = RI(a)-RI(b)) gave very promising results. A LR model for the classification of glass fragments into use-type categories for forensic purposes gives slightly higher misclassification rates than SVM and NBC. However, the observed differences between results obtained by all three approaches were very similar, especially when applied to the car window and building window classification problem. Therefore, the LR model can be recommended because of the ease of interpretation of LR-based measures of certainty.

摘要

本研究的目的是评估基于似然比(LR)的度量方法在用于解决由元素组成和折射率(RI)值描述的玻璃物体的各种分类问题时的效率,并将基于LR的方法与其他分类方法(如支持向量机(SVM)和朴素贝叶斯分类器(NBC))进行比较。通过扫描电子显微镜结合能量色散X射线光谱仪对153个玻璃物体(23个建筑窗户、25个灯泡、32个汽车窗户、57个容器和16个前照灯)进行了分析。测量了建筑窗户和汽车窗户在退火过程之前(RI(b))和之后(RI(a))的折射率。所提出的玻璃碎片分类方案显示出一定的效率,尽管汽车窗户(c)和建筑窗户(w)的分类必须谨慎对待。这是因为它们的元素含量非常相似。然而,元素含量与退火过程中RI变化信息(DeltaRI = RI(a)-RI(b))的结合给出了非常有前景的结果。用于法医目的将玻璃碎片分类为使用类型类别的LR模型的误分类率略高于SVM和NBC。然而,所有三种方法所得结果之间观察到的差异非常相似,特别是在应用于汽车窗户和建筑窗户分类问题时。因此,由于基于LR的确定性度量易于解释,所以可以推荐使用LR模型。

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