A clustering-based indexing approach for biometric databases using decision-level fusion

Ilaiah Kavati, M. Prasad, C. Bhagvati
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引用次数: 3

Abstract

In this paper, we propose a clustering-based indexing mechanism for biometric databases. The proposed technique relies mainly on a small set of preselected images called representative images. First, the database is partitioned into set of clusters and one image from each cluster is selected for the representative image set. Then, for each image in the database, an index code is computed by comparing it against the representative images. Further, an efficient storage structure (i.e., index space) is developed and the biometric images are arranged in it like traditional database records so that a quick search is possible. During identification, list of candidates which are very similar to the query are retrieved from the index space. Further, to make full use of the clustering, we also retrieve the candidate identities from the selected clusters which are similar to query. Finally, the candidate identities from the index space and cluster space are fused using decision-level fusion. Experimental results on different databases show a significant performance improvement in terms of response time and identification accuracy compared to the existing indexing methods.
基于聚类的决策级融合生物特征数据库索引方法
本文提出了一种基于聚类的生物特征数据库索引机制。所提出的技术主要依赖于一小部分被称为代表性图像的预选图像。首先,将数据库划分为一组簇,并从每个簇中选择一个图像作为代表性图像集。然后,对于数据库中的每个图像,通过将其与代表性图像进行比较来计算索引代码。此外,开发了一种高效的存储结构(即索引空间),并将生物特征图像像传统数据库记录一样排列在索引空间中,以便快速搜索。在标识期间,将从索引空间检索与查询非常相似的候选列表。此外,为了充分利用聚类,我们还从选择的与查询相似的聚类中检索候选身份。最后,利用决策级融合对来自索引空间和聚类空间的候选身份进行融合。在不同数据库上的实验结果表明,与现有的索引方法相比,该方法在响应时间和识别精度方面都有显著提高。
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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