多表面潜指纹:数据库及质量分析

A. Sankaran, Akshay Agarwal, Rohit Keshari, Soumyadeep Ghosh, Anjali Sharma, Mayank Vatsa, Richa Singh
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引用次数: 9

摘要

潜在指纹是从多种表面提取的,这些表面在材料类型、纹理、颜色和形状上各不相同。这些表面上的差异在提升的打印中引入了显著的类内差异,例如部分打印的可用性、背景噪声和差的脊结构质量。由于这些观察到的变化,潜在指纹的整体质量和匹配性能因表面特性而异。因此,根据提取指纹的表面特征来表征潜指纹的性能是一个需要关注的重要研究问题。在这项研究中,我们创建了一个新的多表面潜在指纹数据库,并将其公开提供给研究社区。该数据库由51名受试者的551个潜在指纹组成,这些指纹取自8个不同的表面。在现有算法的基础上,对潜在指纹的质量进行表征,计算匹配性能,分析不同表面对潜在指纹的影响。
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Latent fingerprint from multiple surfaces: Database and quality analysis
Latent fingerprints are lifted from multiple types of surfaces, which vary in material type, texture, color, and shape. These differences in the surfaces introduce significant intra-class variations in the lifted prints such as availability of partial print, background noise, and poor ridge structure quality. Due to these observed variations, the overall quality and the matching performance of latent fingerprints vary with respect to surface properties. Thus, characterizing the performance of latent fingerprints according to the surfaces they are lifted from is an important research problem that needs attention. In this research, we create a novel multi-surface latent fingerprint database and make it publicly available for the research community. The database consists of 551 latent fingerprints from 51 subjects lifted from eight different surfaces. Using existing algorithms, we characterize the quality of latent fingerprints and compute the matching performance to analyze the effect of different surfaces.
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