疤痕,标记和纹身(SMT):用于嫌疑人和受害者识别的软生物识别

Jung-Eun Lee, A.K. Jain, Rong Jin
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引用次数: 106

摘要

伤疤、标记和纹身(SMT)越来越多地用于法医和执法机构的嫌疑人和受害者识别。尤其是纹身,由于其视觉和人口特征以及越来越流行,正受到严重关注。然而,目前的纹身匹配程序需要在ANSI/NIST ITL 1-2000标准中人工分配类别标签,这使得它既耗时又主观,而且检索性能有限。此外,纹身图像非常复杂,通常包含多个对象,并且具有很大的类内可变性,因此很难在ANSI/NIST标准中分配单个类别。我们描述了一个基于内容的图像检索(CBIR)系统来匹配和检索纹身图像。基于从纹身图像中提取的尺度不变特征变换(SIFT)特征和可选的附带人口统计信息,我们的系统计算了查询纹身图像与犯罪数据库中纹身之间的特征相似度。在两个不同的纹身数据库上的实验结果显示了令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scars, marks and tattoos (SMT): Soft biometric for suspect and victim identification
Scars, marks and tattoos (SMT) are being increasingly used for suspect and victim identification in forensics and law enforcement agencies. Tattoos, in particular, are getting serious attention because of their visual and demographic characteristics as well as their increasing prevalence. However, current tattoo matching procedure requires human-assigned class labels in the ANSI/NIST ITL 1-2000 standard which makes it time consuming and subjective with limited retrieval performance. Further, tattoo images are complex and often contain multiple objects with large intra-class variability, making it very difficult to assign a single category in the ANSI/NIST standard. We describe a content-based image retrieval (CBIR) system for matching and retrieving tattoo images. Based on scale invariant feature transform (SIFT) features extracted from tattoo images and optional accompanying demographical information, our system computes feature-based similarity between the query tattoo image and tattoos in the criminal database. Experimental results on two different tattoo databases show encouraging results.
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