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Iris recognition based on SIFT features

机译:基于SIFT功能的虹膜识别

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摘要

Biometric methods based on iris images are believed to allow very high accuracy, and there has been an explosion of interest in iris biometrics in recent years. In this paper, we use the Scale Invariant Feature Transformation (SIFT) for recognition using iris images. Contrarily to traditional iris recognition systems, the SIFT approach does not rely on the transformation of the iris pattern to polar coordinates or on highly accurate segmentation, allowing less constrained image acquisition conditions. We extract characteristic SIFT feature points in scale space and perform matching based on the texture information around the feature points using the SIFT operator. Experiments are done using the BioSec multimodal database, which includes 3,200 iris images from 200 individuals acquired in two different sessions. We contribute with the analysis of the influence of different SIFT parameters on the recognition performance. We also show the complementarity between the SIFT approach and a popular matching approach based on transformation to polar coordinates and Log-Gabor wavelets. The combination of the two approaches achieves significantly better performance than either of the individual schemes, with a performance improvement of 24% in the Equal Error Rate.
机译:据信基于虹膜图像的生物特征识别方法具有很高的准确性,并且近年来虹膜生物特征识别的兴趣激增。在本文中,我们使用尺度不变特征变换(SIFT)进行虹膜图像识别。与传统的虹膜识别系统相反,SIFT方法不依赖于将虹膜图案转换为极坐标或高度精确的分割,从而减少了受约束的图像采集条件。我们在尺度空间中提取特征SIFT特征点,并使用SIFT运算符基于特征点周围的纹理信息进行匹配。实验是使用BioSec多模态数据库完成的,该数据库包含来自200个个体的3,200个虹膜图像,这些图像是在两次不同的会议中获得的。我们致力于分析不同SIFT参数对识别性能的影响。我们还展示了SIFT方法与基于极坐标和Log-Gabor小波变换的流行匹配方法之间的互补性。两种方法的组合比单个方案中的任何一种都具有明显更好的性能,并且均等错误率提高了24%。

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