Latent Palm Print Matching Based on Minutiae Features for Forensic Applications 

R. Abinaya, Sesha Vidhya S., S. Vadivel
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Abstract

In forensic application, palm print recognition receives significant attention because of the developing live scan palm print technology. In most forensic applications, the critical evidence obtained is those of latent palm prints. About 30% of the latent obtained from the crime scenes are of palms. Palm prints has large area of foreground, which consists of 1000’s of minutiae points. Hence latent palm print matching requires development of novel strategies. Here we design a palm print matching strategy which is based on minutiae clustering. The minutiae match propagation is also considered for the minutiae correspondence. Minutiae clusters are formed based on the local minutiae features. Each cluster contains minutiae that contain similar local features. The correspondence between two palm print is done within the clusters. Mated minutiae pairs are considered by the Minutiae match propagation algorithm to determine the correspondence between the query palm print and the full palm print. Starting with the initial minutiae pair, the algorithm checks for further matches with the full palm print image.
基于细节特征的潜在掌纹匹配在法医应用中的应用
随着实时扫描掌纹技术的发展,掌纹识别技术在司法鉴定领域受到越来越多的关注。在大多数法医应用中,获得的关键证据是那些潜在的掌纹。从犯罪现场获得的潜伏物中有30%是棕榈树。掌纹的前景面积很大,由上千个细节点组成。因此,潜在掌纹匹配需要开发新的策略。本文设计了一种基于细节聚类的掌纹匹配策略。对于细节通信,还考虑了细节匹配传播。特征聚类是基于局部特征形成的。每个集群都包含包含相似局部特征的细节。两个掌纹之间的对应是在集群内完成的。细节匹配传播算法考虑匹配的细节对,以确定查询掌纹与完整掌纹之间的对应关系。从最初的细节对开始,算法检查与完整掌纹图像的进一步匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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