首页> 外文期刊>Journal of forensic sciences. >Statistical discrimination of footwear: a method for the comparison of accidentals on shoe outsoles inspired by facial recognition techniques.
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Statistical discrimination of footwear: a method for the comparison of accidentals on shoe outsoles inspired by facial recognition techniques.

机译:鞋类的统计判别:一种比较受面部识别技术启发的鞋外底上偶然性的方法。

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In the field of forensic footwear examination, it is a widely held belief that patterns of accidental marks found on footwear and footwear impressions possess a high degree of "uniqueness." This belief, however, has not been thoroughly studied in a numerical way using controlled experiments. As a result, this form of valuable physical evidence has been the subject of admissibility challenges. In this study, we apply statistical techniques used in facial pattern recognition, to a minimal set of information gleaned from accidental patterns. That is, in order to maximize the amount of potential similarity between patterns, we only use the coordinate locations of accidental marks (on the top portion of a footwear impression) to characterize the entire pattern. This allows us to numerically gauge how similar two patterns are to one another in a worst-case scenario, i.e., in the absence of a tremendous amount of information normally available to the footwear examiner such as accidental mark size and shape. The patterns were recorded from the top portion of the shoe soles (i.e., not the heel) of five shoe pairs. All shoes were the same make and model and all were worn by the same person for a period of 30 days. We found that in 20-30 dimensional principal component (PC) space (99.5% variance retained), patterns from the same shoe, even at different points in time, tended to cluster closer to each other than patterns from different shoes. Correct shoe identification rates using maximum likelihood linear classification analysis and the hold-one-out procedure ranged from 81% to 100%. Although low in variance, three-dimensional PC plots were made and generally corroborated the findings in the much higher dimensional PC-space. This study is intended to be a starting point for future research to build statistical models on the formation and evolution of accidental patterns.
机译:在法医鞋类检查领域,人们普遍认为,在鞋类和鞋印上发现的意外标记图案具有高度的“唯一性”。但是,尚未使用受控实验以数字方式彻底研究此信念。结果,这种形式的有价值的物理证据已成为受理挑战的主题。在这项研究中,我们将用于面部模式识别的统计技术应用于从偶然模式中收集到的最少信息。也就是说,为了使图案之间的潜在相似性最大化,我们仅使用偶然标记的坐标位置(在鞋印的顶部)来表征整个图案。这使我们能够在最坏的情况下,即在缺少鞋类检查员通常可获得的大量信息(例如偶然的标记尺寸和形状)的情况下,通过数值方式来评估两种模式之间的相似度。从五双鞋对的鞋底(即不是脚跟)的顶部记录图案。所有鞋子的品牌和型号都相同,并且同一个人穿着30天。我们发现,在20-30维的主成分(PC)空间(保留99.5%的方差)中,同一只鞋子的图案,即使在不同的时间点,也比来自不同鞋子的图案趋于彼此靠近。使用最大似然线性分类分析和保留一劳永逸程序的正确鞋识别率范围为81%至100%。尽管方差很小,但仍进行了三维PC绘制,并大体上证实了三维PC空间中的发现。本研究旨在作为未来研究的起点,以建立关于事故模式形成和演变的统计模型。

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