Partial Fingerprint Matching through Region-Based Similarity

Omid Zanganeh, B. Srinivasan, Nandita Bhattacharjee
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引用次数: 36

Abstract

Despite advances in fingerprint matching, partial/incomplete/fragmentary fingerprint recognition remains a challenging task. While miniaturization of fingerprint scanners limits the capture of only part of the fingerprint, there is also special interest in processing latent fingerprints which are likely to be partial and of low quality. Partial fingerprints do not include all the structures available in a full fingerprint, hence a suitable matching technique which is independent of specific fingerprint features is required. Common fingerprint recognition methods are based on fingerprint minutiae which do not perform well when applied to low quality images and might not even be suitable for partial fingerprint recognition. To overcome this drawback, in this research, a region-based fingerprint recognition method is proposed in which the fingerprints are compared in a pixel- wise manner by computing their correlation coefficient. Therefore, all the attributes of the fingerprint contribute in the matching decision. Such a technique is promising to accurately recognise a partial fingerprint as well as a full fingerprint compared to the minutiae-based fingerprint recognition methods.The proposed method is based on simple but effective metrics that has been defined to compute local similarities which is then combined into a global score such that it is less affected by distribution skew of the local similarities. Extensive experiments over Fingerprint Verification Competition (FVC) data set proves the superiority of the proposed method compared to other techniques in literature.
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基于区域相似度的部分指纹匹配
尽管指纹匹配技术不断进步,但部分/不完整/碎片指纹识别仍然是一项具有挑战性的任务。虽然指纹扫描仪的小型化限制了只能捕获部分指纹,但对可能是部分和低质量的潜在指纹的处理也有特别的兴趣。部分指纹不包括完整指纹的所有结构,因此需要一种独立于特定指纹特征的匹配技术。常用的指纹识别方法是基于指纹细节的,当应用于低质量图像时表现不佳,甚至可能不适合部分指纹识别。为了克服这一缺点,本研究提出了一种基于区域的指纹识别方法,该方法通过计算指纹的相关系数,以像素为单位对指纹进行比较。因此,指纹的所有属性都对匹配决策有贡献。与基于细节的指纹识别方法相比,该技术有望准确识别部分指纹和完整指纹。所提出的方法是基于简单而有效的度量来计算局部相似度,然后将其组合成一个全局得分,使其受局部相似度分布倾斜的影响较小。在指纹验证竞争(FVC)数据集上的大量实验证明了该方法与文献中其他技术相比的优越性。
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