一种基于无监督聚类的高效指静脉索引方案

Ramachandra Raghavendra, Jayachander Surbiryala, C. Busch
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引用次数: 13

摘要

手指静脉识别由于其独特的静脉模式可以使用近红外光谱捕获而成为强大的生物识别方式。基于手指静脉的大规模生物识别解决方案需要在大量的画廊样本中搜索探针手指静脉样本。为了提高在大规模手指静脉数据库中搜索到合适身份的可靠性,有必要引入手指静脉索引和检索方案。在这项工作中,我们提出了一种新的基于无监督聚类的手指静脉索引和检索方案。在此范围内,我们研究了三种不同的聚类方案,即K-means, k - medioids和自组织映射(SOM)神经网络。此外,我们还提出了一种新的特征提取方案,从手指静脉图像中提取更适合构建索引空间的紧凑特征和判别特征。利用7种不同的公开手指静脉数据库构建了2850个独特身份的大型异质手指静脉数据库,并对其进行了大量实验。结果表明,该方案的预选率为7.58%(命中率为92.42%),穿透率为42.48%。此外,多聚类搜索的预选错误率为0.98%(命中率为99.02%),渗透率为52.88%。
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An efficient finger vein indexing scheme based on unsupervised clustering
Finger vein recognition has emerged as the robust biometric modality because of their unique vein pattern that can be captured using near infrared spectrum. The large scale finger vein based biometric solutions demand the need of searching the probe finger vein sample against the large collection of gallery samples. In order to improve the reliability in searching for the suitable identity in the large-scale finger vein database, it is essential to introduce the finger vein indexing and retrieval scheme. In this work, we present a novel finger vein indexing and retrieval scheme based on unsupervised clustering. To this extent we investigated three different clustering schemes namely K-means, K-medoids and Self Organizing Maps (SOM) neural networks. In addition, we also present a new feature extraction scheme to extract both compact and discriminant features from the finger vein images that are more suitable to build the indexing space. Extensive experiments are carried out on a large-scale heterogeneous finger vein database comprised of 2850 unique identities constructed using seven different publicly available finger vein databases. The obtained results demonstrated the efficacy of the proposed scheme with a pre-selection rate of 7.58% (hit rate of 92.42%) with a penetration rate of 42.48%. Further, the multi-cluster search demonstrated the performance with pre-selection error rate of 0.98% (hit rate of 99.02%) with a penetration rate of 52.88%.
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