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无法识别指纹的出现及关联价值。

Occurrence and associative value of non-identifiable fingermarks.

机构信息

Stoney Forensic, Inc., 14101-G Willard Road Chantilly, VA, 20151-2934, USA.

School of Criminal Justice, Faculty of Law, Criminal Justice and Public Administration, Batochime, Quarter Sorge, CH-1015, Lausanne-Dorigny, Switzerland.

出版信息

Forensic Sci Int. 2020 Apr;309:110219. doi: 10.1016/j.forsciint.2020.110219. Epub 2020 Feb 26.

Abstract

Fingermarks that have insufficient characteristics for identification often have discernible characteristics that could form the basis for lesser degrees of correspondence or probability of occurrence within a population. Currently, those latent prints that experts judge to be insufficient for identification are not used as associative evidence. How often do such prints occur and what is their potential value for association? The answers are important. We could be routinely setting aside a very important source of associative evidence, with high potential impact, in many cases; or such prints might be of very low utility, adding very little, or only very rarely contributing to cases in a meaningful way. The first step is to better understand the occurrence and range of associative value of these fingermarks. The project goal was to explore and test a theory that in large numbers of cases fingermarks of no value for identification purposes occur and are readily available, though not used, and yet have associative value that could provide useful information. Latent fingermarks were collected from nine state and local jurisdictions. Fingermarks included were those (1) collected in the course of investigations using existing jurisdictional procedures, (2) originally assessed by the laboratory as of no value for identification (NVID), (3) re-assessed by expert review as NVID, but with least three clear and reliable minutiae in relationship to one another, and (4) determined to show at least three auto-encoded minutiae. An expected associative value (ESLR) for each mark was measured, without reference to a putative source, based on modeling within-variability and between-variability of AFIS scores. This method incorporated (1) latest generation feature extraction, (2) a (minutiae-only) matcher, (3) a validated distortion model, and (4) NIST SD27 database calibration. Observed associative value distributions were determined for violent crimes, property crimes, and for existing objective measurements of latent print quality. 750 Non Identifiable Fingermarks (NIFMs) showed values of Log ESLR ranging from 1.05-10.88, with a mean value of 5.56 (s.d. 2.29), corresponding to an ESLR of approximately 380,000. It is clear that there are large numbers of cases where NIFMs occur that have high potential associative value as indicated by the ESLR. These NIFMs are readily available, but not used, yet have associative value that could provide useful information. These findings lead to the follow-on questions, "How useful would NIFM evidence be in actual practice?" and, "What developments or improvements are needed to maximize this contribution?"

摘要

指纹如果特征不足,通常仍具有可识别的特征,这些特征可以作为人群中对应程度或出现概率较低的基础。目前,专家判断不足以进行识别的这些潜在指纹不被用作关联证据。这些指纹出现的频率是多少,它们的关联价值有多大?答案很重要。在许多情况下,我们可能会经常将一个非常重要的、具有高潜在影响的关联证据来源搁置一旁;或者这些指纹的利用价值非常低,很少或只有在极少数情况下对案件有意义地做出贡献。第一步是更好地了解这些指纹的出现和关联价值的范围。该项目的目标是探索和检验一种理论,即在大量情况下,尽管没有使用,但仍有无法用于识别目的的指纹,但具有关联价值,可以提供有用的信息。从九个州和地方司法管辖区收集了潜在指纹。包括以下指纹:(1) 使用现有的司法程序在调查过程中收集的指纹;(2) 实验室最初评估为无识别价值(NVID)的指纹;(3) 专家审查重新评估为 NVID,但彼此之间至少有三个清晰可靠的细节特征;(4) 确定至少显示三个自动编码的细节特征。根据 AFIS 分数的内变异和间变异建模,在不参考假定来源的情况下,对每个标记测量了预期关联值(ESLR)。这种方法结合了(1)最新一代的特征提取;(2) (仅细节特征)匹配器;(3) 经过验证的失真模型;以及(4) NIST SD27 数据库校准。为暴力犯罪、财产犯罪以及现有的潜在指纹质量客观测量确定了观察到的关联值分布。750 个无法识别的指纹(NIFM)的 Log ESLR 值范围从 1.05 到 10.88,平均值为 5.56(标准差为 2.29),对应的 ESLR 约为 380,000。很明显,有大量的情况下会出现 NIFM,这些 NIFM 具有很高的潜在关联价值,这一点从 ESLR 中可以看出。这些 NIFM 很容易获得,但未被使用,但具有关联价值,可以提供有用的信息。这些发现引出了后续问题,“NIFM 证据在实际实践中会有多有用?”以及“为了最大限度地发挥这一贡献,需要哪些发展或改进?”

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