Catching Even More Offenders with EvoFIT Facial Composites

C. Frowd, Melanie Pitchford, F. Skelton, Anna Petkovic, C. Prosser, B. Coates
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引用次数: 29

Abstract

Facial composites are an investigative tool used by police to identify suspects of crime. Unfortunately, traditional methods to construct the face have rather low success rates. We have been developing a new recognition-based method called EvoFIT that requires eyewitnesses to select whole faces from arrays of alternatives. Both published laboratory research and existing police field-trials have found that EvoFIT produces images that are more identifiable than images from traditional systems. In the current paper, we present an evaluation of a more recent version of EvoFIT: in 2010, EvoFIT was deployed in 35 criminal investigations by Humberside police and these images directly led to identification of 21 suspects, equating to 60% success - quadruple the performance of the previous system used within the force. The evaluation also showed that identification of a suspect led to conviction in 29% of investigations (6 out of 21). Overall, a conviction occurred in 17% of cases involving use of an EvoFIT (6 out of 35). We also outline more recent developments which indicate that an arrest is now likely in three out of every four cases in which EvoFIT is used, and a conviction rate of one in five.
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用EvoFIT面部复合材料抓住更多罪犯
面部合成是警方用来识别犯罪嫌疑人的一种调查工具。不幸的是,传统的面部构造方法成功率很低。我们一直在开发一种新的基于识别的方法,叫做EvoFIT,它要求目击者从一组备选方案中选择整张脸。已发表的实验室研究和现有的警察现场试验都发现,EvoFIT产生的图像比传统系统产生的图像更具可识别性。在当前的论文中,我们对最新版本的EvoFIT进行了评估:2010年,亨伯赛德郡警方在35起刑事调查中部署了EvoFIT,这些图像直接导致了21名嫌疑人的识别,相当于60%的成功率,是以前使用的系统的四倍。调查结果还显示,在21件调查中,有6件(29%)的调查结果表明,嫌疑人的身份导致了定罪。总体而言,涉及使用EvoFIT的案件中有17%被定罪(35例中有6例)。我们还概述了最近的发展,这些发展表明,在使用EvoFIT的案件中,现在有四分之三的案件可能被逮捕,定罪率为五分之一。
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