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LAFIN: A Convolutional Neural Network-based Technique for Singular Point Extraction and Classification of Latent Fingerprints

机译:Lafin:基于卷积神经网络的奇异点提取和潜在指纹分类技术

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Latent fingerprints left at crime scenes are useful evidence in the court of law. Law enforcement agencies have been using latent fingerprints for many years as a reliable forensic evidence for crime scene analysis. However, due to poor quality images and complex image background, current state-of-the-art for automatic latent fingerprint processing is not as reliable as rolled or live scan fingerprints. In this paper, we propose a Convolutional Neural Network (CNN) based model (LAFIN) to classify latent fingerprints into five different classes. The classification result along with fingerprint image is then fed to a mini classifier to extract the singular points (if any) present in the latent fingerprint. The CNN model for latent fingerprint classification is trained on different fingerprint images from IIIT-D latent database and NIST Special database 4. The results on publicly available IIIT-D latent fingerprint database demonstrate the efficiency of the proposed approach.
机译:在犯罪现场留下的潜在指纹是法庭法院的有用证据。执法机构一直在利用潜在的指纹作为犯罪现场分析的可靠取证证据。然而,由于质量差和复杂的图像背景,目前的自动潜在指纹处理最先进的最先进,不像滚动或活扫描指纹那样可靠。在本文中,我们提出了一种基于卷积神经网络(CNN)的模型(Lafin)来将潜在指纹分为五种不同的类别。然后将分类结果与指纹图像一起馈送到迷你分类器以提取存在于潜在指纹中存在的奇异点(如果有)。潜在指纹分类的CNN模型在IIIT-D潜在数据库和NIST特殊数据库4中培训了不同的指纹图像4.结果上可公开的IIIT-D潜在指纹数据库的结果展示了所提出的方法的效率。

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