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Retinal Identification Based on an Improved Circular Gabor Filter and Scale Invariant Feature Transform

机译:基于改进的圆形Gabor滤波器和尺度不变特征变换的视网膜识别

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Retinal identification based on retinal vasculatures in the retina provides the most secure and accurate means of authentication among biometrics and has primarily been used in combination with access control systems at high security facilities. Recently, there has been much interest in retina identification. As digital retina images always suffer from deformations, the Scale Invariant Feature Transform (SIFT), which is known for its distinctiveness and invariance for scale and rotation, has been introduced to retinal based identification. However, some shortcomings like the difficulty of feature extraction and mismatching exist in SIFT-based identification. To solve these problems, a novel preprocessing method based on the Improved Circular Gabor Transform (ICGF) is proposed. After further processing by the iterated spatial anisotropic smooth method, the number of uninformative SIFT keypoints is decreased dramatically. Tested on the VARIA and eight simulated retina databases combining rotation and scaling, the developed method presents promising results and shows robustness to rotations and scale changes.
机译:基于视网膜中视网膜脉管系统的视网膜识别提供了生物识别技术中最安全,最准确的身份验证方法,主要用于与高安全性设施中的访问控制系统结合使用。最近,人们对视网膜的鉴定非常感兴趣。由于数字视网膜图像总是会变形,因此以其独特性和尺度和旋转不变性而闻名的尺度不变特征变换(SIFT)已被引入基于视网膜的识别中。然而,在基于SIFT的识别中存在诸如特征提取和失配的困难之类的缺点。为了解决这些问题,提出了一种基于改进的圆形Gabor变换(ICGF)的预处理方法。通过迭代的空间各向异性平滑方法进行进一步处理后,非信息性SIFT关键点的数量大大减少。在VARIA和八个模拟的视网膜数据库(结合旋转和缩放)上进行了测试,该开发的方法显示出令人鼓舞的结果,并显示出对旋转和缩放变化的鲁棒性。

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