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Methods for iris classification and macro feature detection.

机译:虹膜分类和宏特征检测的方法。

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摘要

This work deals with two distinct aspects of iris-based biometric systems: iris classification and macro-feature detection. Iris classification will benefit identification systems where the query image has to be compared against all identities in the database. By preclassifying the query image based on its texture, this comparison is executed only against those irises that are from the same class as the query image. In the proposed classification method, the normalized iris is tessellated into overlapping rectangular blocks and textural features are extracted from each block. A clustering scheme is used to generate multiple classes of irises based on the extracted features. A minimum distance classifier is then used to assign the query iris to a particular class. The use of multiple blocks with decision level fusion in the classification process is observed to enhance the accuracy of the method.;Most iris-based systems use the global and local texture information of the iris to perform matching. In order to exploit the anatomical structures within the iris during the matching stage, two methods to detect the macro-features of the iris in multi-spectral images are proposed. These macro-features typically correspond to "anomalies" in pigmentation and structure within the iris. The first method uses the edge-flow technique to localize these features. The second technique uses the SIFT (Scale Invariant Feature Transform) operator to detect discontinuities in the image. Preliminary results show that detection of these macro features is a difficult problem owing to the richness and variability in iris color and texture. Thus a large number of spurious features are detected by both the methods suggesting the need for designing more sophisticated algorithms. However the ability of the SIFT operator to match partial iris images is demonstrated thereby indicating the potential of this scheme to be used for macro-feature detection.
机译:这项工作涉及基于虹膜的生物特征识别系统的两个不同方面:虹膜分类和宏观特征检测。虹膜分类将有利于识别系统,在该系统中,必须将查询图像与数据库中的所有身份进行比较。通过基于其纹理对查询图像进行预分类,可以仅对与查询图像属于同一类的虹膜执行此比较。在提出的分类方法中,将标准化虹膜细分为重叠的矩形块,并从每个块中提取纹理特征。聚类方案用于基于提取的特征来生成多种类别的虹膜。然后使用最小距离分类器将查询虹膜分配给特定类别。观察到在分类过程中使用具有决策级融合的多个块来提高该方法的准确性。大多数基于虹膜的系统使用虹膜的全局和局部纹理信息来执行匹配。为了在匹配阶段利用虹膜内的解剖结构,提出了两种在多光谱图像中检测虹膜宏观特征的方法。这些宏观特征通常对应于虹膜内色素沉着和结构的“异常”。第一种方法使用边缘流技术来定位这些特征。第二种技术使用SIFT(尺度不变特征变换)运算符来检测图像中的不连续性。初步结果表明,由于虹膜颜色和纹理的丰富性和可变性,检测这些宏特征是一个难题。因此,两种方法都检测到大量杂散特征,表明需要设计更复杂的算法。但是,证明了SIFT运算符匹配部分虹膜图像的能力,从而表明了该方案用于宏特征检测的潜力。

著录项

  • 作者

    Sunder, Manisha Sam.;

  • 作者单位

    West Virginia University.;

  • 授予单位 West Virginia University.;
  • 学科 Health Sciences Ophthalmology.;Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2009
  • 页码 118 p.
  • 总页数 118
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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