Latent fingerprint persistence: A new temporal feature space for forensic trace evidence analysis

R. Merkel, J. Dittmann, M. Hildebrandt
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引用次数: 7

Abstract

In forensic applications, traces are often hard to detect and segment from challenging substrates at crime scenes. In this paper, we propose to use the temporal domain of forensic signals as a novel feature space to provide additional information about a trace. In particular we introduce a degree of persistence measure and a protocol for its computation, allowing for a flexible extraction of time domain information based on different features and approximation techniques. At the example of latent fingerprints on semi-/porous surfaces and a CWL sensor, we show the potential of such approach to achieve an increased performance for the challenge of separating prints from background. Based on 36 earlier introduced spectral texture features, we achieve an increased separation performance (0.01 ≤ Δκ ≤ 0.13, respective 0.6% to 6.7%) when using the time domain signal instead of spatial segmentation. The test set consists of 60 different prints on photographic-, catalogue- and copy paper, acquired in a sequence of ten times. We observe a dependency on the used surface as well as the number of consecutive images and identify the accuracy and reproducibility of the capturing device as the main limitation, proposing additional steps for even higher performances in future work.
潜在指纹持久性:一种新的法医痕迹证据分析时间特征空间
在法医应用中,痕迹通常很难从犯罪现场的具有挑战性的基材中检测和分割。在本文中,我们建议使用法医信号的时域作为一种新的特征空间来提供有关痕迹的附加信息。特别地,我们引入了一种持久性度量及其计算协议,允许基于不同特征和近似技术灵活地提取时域信息。以半/多孔表面上的潜在指纹和CWL传感器为例,我们展示了这种方法的潜力,可以提高从背景中分离指纹的性能。基于之前介绍的36个光谱纹理特征,我们使用时域信号代替空间分割,获得了更高的分离性能(0.01≤Δκ≤0.13,分别为0.6% ~ 6.7%)。这套测试装置由60张不同的照片组成,这些照片是在照相纸、目录纸和复印纸上以10次的顺序获得的。我们观察到对所用表面的依赖以及连续图像的数量,并确定捕获设备的准确性和可重复性是主要限制,并提出了在未来工作中提高性能的附加步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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