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3D Matching techniques using OCT fingerprint point clouds

机译:使用OCT指纹点云的3D匹配技术

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Optical Coherence Tomography (OCT) makes viable acquisition of 3D fingerprints from both dermis and epidermis skin layers and their interfaces, exposing features that can be explored to improve biometric identification such as the curvatures and distinctive 3D regions. Scanned images from eleven volunteers allowed the construction of the first OCT 3D fingerprint database, to our knowledge, containing epidermal and dermal fingerprints. 3D dermal fingerprints can be used to overcome cases of Failure to Enroll (FTE) due to poor ridge image quality and skin alterations, cases that affect 2D matching performance. We evaluate three matching techniques, including the well-established Iterative Closest Points algorithm (ICP), Surface Interpenetration Measure (SIM) and the well-known KH Curvature Maps, all assessed using a 3D OCT fingerprint database, the first one for this purpose. Two of these techniques are based on registration techniques and one on curvatures. These were evaluated, compared and the fusion of matching scores assessed. We applied a sequence of steps to extract regions of interest named (ROI) minutiae clouds, representing small regions around distinctive minutia, usually located at ridges/valleys endings or bifurcations. The obtained ROI is acquired from the epidermis and dermis-epidermis interface by OCT imaging. A comparative analysis of identification accuracy was explored using different scenarios and the obtained results shows improvements for biometric identification. A comparison against 2D fingerprint matching algorithms is also presented to assess the improvements.
机译:光学相干断层扫描(OCT)可从真皮和表皮皮肤层以及它们的界面中获取3D指纹,从而暴露出可以用来改善生物特征识别的特征,例如曲率和独特的3D区域。据我们所知,来自11名志愿者的扫描图像允许构建第一个OCT 3D指纹数据库,其中包含表皮和真皮指纹。 3D皮肤指纹可用于克服由于不良的脊线图像质量和皮肤变化而导致无法注册(FTE)的情况,这些情况会影响2D匹配性能。我们评估了三种匹配技术,包括完善的迭代最近点算法(ICP),表面互穿度测量(SIM)和著名的KH曲率图,所有这些技术均使用3D OCT指纹数据库进行了评估,其中第一个用于此目的。这些技术中的两种基于配准技术,一种基于曲率。对这些进行评估,比较并评估匹配分数的融合。我们应用了一系列步骤来提取名为(ROI)细节云的目标区域,这些区域代表着独特的细节周围的小区域,通常位于山脊/山谷的末端或分叉处。通过OCT成像从表皮和真皮-表皮的界面获取所获得的ROI。使用不同的场景对识别准确性进行了比较分析,获得的结果表明了生物识别的改进。还提出了与2D指纹匹配算法的比较以评估改进。

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