首页> 外文会议>Biometric Technology for Human Identification IV; Proceedings of SPIE-The International Society for Optical Engineering; vol.6539 >Using Support Vector Machines to Eliminate False Minutiae Matches during Fingerprint Verification
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Using Support Vector Machines to Eliminate False Minutiae Matches during Fingerprint Verification

机译:在指纹验证过程中使用支持向量机消除错误的细节匹配

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To compensate for the different orientations of two fingerprint images, matching systems use a reference point and a set of transformation parameters. Fingerprint minutiae are compared on their positions relative to the reference points, using a set of thresholds for the various matching features. However a pair of minutiae might have similar values for some of the features compensated by dissimilar values for others; this tradeoff cannot be modeled by arbitrary thresholds, and might lead to a number of false matches. Instead given a list of potential correspondences of minutiae points, we could use a static classifier, such as a support vector machine (SVM) to eliminate some of the false matches. A 2-class model is built using sets of minutiae correspondences from fingerprint pairs known to belong to the same and different users. For a test pair of fingerprints, a similar set of minutiae correspondences is extracted and given to the recognizer, using only those classified as genuine matches to calculate the similarity score, and thus, the matching result. We have built recognizers using different combinations of fingerprint features and have tested them against the FVC 2002 database. Using this recognizer reduces the number of false minutiae matches by 19%, while only 5% of the minutiae pairs corresponding to fingerprints of the same user are rejected. We study the effect of such a reduction on the final error rate, using different scoring schemes.
机译:为了补偿两个指纹图像的不同方向,匹配系统使用参考点和一组转换参数。使用各种匹配功能的一组阈值,比较指纹细节在其相对于参考点的位置上。但是,对于某些特征,一对细节可能具有相似的值,而对于其他特征,可能有不同的值。这种折衷不能通过任意阈值来建模,并且可能导致许多错误匹配。取而代之的是给出细节点的潜在对应关系列表,我们可以使用静态分类器,例如支持向量机(SVM)来消除某些错误匹配。使用来自已知属于相同和不同用户的指纹对的详细信息集来构建2类模型。对于测试对指纹,仅使用被分类为真正匹配的那些细节来提取相似的细节细节集并将其提供给识别器,以计算相似性得分,从而计算出匹配结果。我们使用指纹特征的不同组合构建了识别器,并已针对FVC 2002数据库对其进行了测试。使用此识别器可将错误的细节匹配项的数量减少19%,而仅5%的与同一用户的指纹相对应的细节对将被拒绝。我们使用不同的评分方案研究了这种减少对最终错误率的影响。

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