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首页> 外文期刊>Forensic science international >Evidence evaluation in fingerprint comparison and automated fingerprint identification systems--modelling within finger variability.
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Evidence evaluation in fingerprint comparison and automated fingerprint identification systems--modelling within finger variability.

机译:指纹比较和自动指纹识别系统中的证据评估-手指变异性内的建模。

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摘要

Recent challenges and errors in fingerprint identification have highlighted the need for assessing the information content of a papillary pattern in a systematic way. In particular, estimation of the statistical uncertainty associated with this type of evidence is more and more called upon. The approach used in the present study is based on the assessment of likelihood ratios (LRs). This evaluative tool weighs the likelihood of evidence given two mutually exclusive hypotheses. The computation of likelihood ratios on a database of marks of known sources (matching the unknown and non-matching the unknown mark) allows an estimation of the evidential contribution of fingerprint evidence. LRs are computed taking advantage of the scores obtained from an automated fingerprint identification system and hence are based exclusively on level II features (minutiae). The AFIS system attributes a score to any comparison (fingerprint to fingerprint, mark to mark and mark to fingerprint), used here as a proximity measure between the respective arrangements of minutiae. The numerator of the LR addresses the within finger variability and is obtained by comparing the same configurations of minutiae coming from the same source. Only comparisons where the same minutiae are visible both on the mark and on the print are therefore taken into account. The denominator of the LR is obtained by cross-comparison with a database of prints originating from non-matching sources. The estimation of the numerator of the LR is much more complex in terms of specific data requirements than the estimation of the denominator of the LR (that requires only a large database of prints from an non-associated population). Hence this paper addresses specific issues associated with the numerator or within finger variability. This study aims at answering the following questions: (1) how a database for modelling within finger variability should be acquired; (2) whether or not the visualisation technique or the choice of different minutiae arrangementsmay influence that modelling and (3) what is the magnitude of LRs that can be expected from such a model. Results show that within finger variability is affected by the visualisation technique used on the mark, the number of minutiae and the minutiae configuration. They also show that the rates of misleading evidence in the likelihood ratios obtained for one of the configurations examined are low.
机译:指纹识别中的最新挑战和错误突出表明,需要以系统的方式评估乳头状图案的信息内容。特别地,越来越需要与这种类型的证据相关的统计不确定性的估计。本研究中使用的方法是基于似然比(LRs)的评估。该评估工具根据两个互斥的假设权衡证据的可能性。在已知来源的标记的数据库上(匹配未知标记和不匹配未知标记)的似然比的计算允许估计指纹证据的证据贡献。 LR是利用从自动指纹识别系统获得的分数来计算的,因此仅基于II级特征(细节)。 AFIS系统将得分归因于任何比较(指纹到指纹,标记到标记和标记到指纹),在此用作细节设置之间的接近度。 LR的分子解决了手指内部的变异性,并通过比较来自相同来源的细节的相同配置而获得。因此,仅考虑在标记和印刷品上都可以看到相同细节的比较。 LR的分母是通过与源于不匹配来源的印刷品数据库进行交叉比较而获得的。就特定的数据需求而言,LR分子的估计比LR分母的估计要复杂得多(后者仅需要来自非关联人群的大量打印数据库)。因此,本文解决了与分子或手指可变性相关的特定问题。本研究旨在回答以下问题:(1)如何获取用于手指变异性内建模的数据库; (2)可视化技术或不同细节配置的选择是否可能影响建模,以及(3)从该模型可以预期的LR大小是多少。结果表明,手指内部的变异性受标记上使用的可视化技术,细节的数量和细节配置的影响。他们还表明,针对所检查的配置之一获得的似然比中的误导性证据的比率很低。

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