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Comparison of algorithms for blood stain detection applied to forensic hyperspectral imagery

机译:应用于法医高光谱图像的血迹检测算法的比较

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摘要

Blood stains are among the most important types of evidence for forensic investigation. They contain valuable DNA information, and the pattern of the stains can suggest specifics about the nature of the violence that transpired at the scene. Early detection of blood stains is particularly important since the blood reacts physically and chemically with air and materials over time. Accurate identification of blood remnants, including regions that might have been intentionally cleaned, is an important aspect of forensic investigation. Hyperspectral imaging might be a potential method to detect blood stains because it is non-contact and provides substantial spectral information that can be used to identify regions in a scene with trace amounts of blood. The potential material complexity of scenes in which such vast violence occurs can be high when the range of scene material types and conditions containing blood stains at a crime scene are considered. Some stains are hard to detect by the unaided eye, especially if a conscious effort to clean the scene has occurred (we refer to these as "latent" blood stains). In this paper we present the initial results of a study of the use of hyperspectral imaging algorithms for blood detection in complex scenes. We describe a hyperspectral imaging system which generates images covering 400 run - 700 nm visible range with a spectral resolution of 10 run. Three image sets of 31 wavelength bands were generated using this camera for a simulated indoor crime scene in which blood stains were placed on a T-shirt and walls. To detect blood stains in the scene, Principal Component Analysis (PCA), SubSpace Reed Xiaoli (SSRX), and Topological Anomaly Detection (TAD) algorithms were used. Comparison of the three hyperspectral image analysis techniques shows that TAD is most suitable for detecting blood stains in this environment and discovering latent blood stains.
机译:血迹是法医调查最重要的证据之一。它们包含有价值的DNA信息,污渍的图案可以建议有关现场发生的暴力行为的性质的细节。尽早发现血迹非常重要,因为随着时间的流逝,血液会与空气和材料发生物理和化学反应。准确识别血液残留物,包括可能被故意清洁的区域,是法医调查的重要方面。高光谱成像可能是检测血迹的一种潜在方法,因为它是非接触性的,并提供了可用于识别场景中痕量血液的区域的大量光谱信息。当考虑到犯罪现场的现场材料类型和条件中包含血迹的情况时,发生这种大规模暴力事件的现场的潜在材料复杂性可能很高。肉眼很难察觉到一些污渍,尤其是在进行有意识的清洁场景的努力的情况下(我们将其称为“潜在”血渍)。在本文中,我们介绍了使用高光谱成像算法在复杂场景中进行血液检测的研究的初步结果。我们描述了一种高光谱成像系统,该系统生成的图像覆盖400行程-700 nm可见范围,光谱分辨率为10行程。使用此相机为模拟的室内犯罪现场生成了三组31个波段的图像,其中将血迹放置在T恤衫和墙壁上。为了检测现场的血迹,使用了主成分分析(PCA),SubSpace Reed Xiaoli(SSRX)和拓扑异常检测(TAD)算法。三种高光谱图像分析技术的比较表明,TAD最适合在这种环境下检测血迹并发现潜在的血迹。

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