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引用次数: 12

摘要

提出的虹膜识别的目的是通过虹膜肌肉模式的纹理特征来识别人的身份。尽管眼睛的颜色取决于遗传,但与之相反,虹膜是独立的,即使是双胞胎也是不相关的。在手指和手的几何形状、面部、耳朵和声音识别等各种生物识别技术中,虹膜识别因其较高的识别率而被公认为最准确的生物识别方式之一。本文提出的虹膜识别方法采用负函数法和四邻域法对瞳孔进行定位,无论瞳孔的轮廓是圆形还是椭圆形,都能准确地检测出瞳孔的边界。对于虹膜外边界检测,采用对比度增强、特殊楔形和阈值化技术分离出没有眼睑和睫毛遮挡的特定虹膜区域。将得到的虹膜部分单独转换成极坐标系进行归一化处理。采用直方图均衡化技术增强归一化后的虹膜图像。在特征提取和匹配过程中,采用了基于累积和的变化分析和汉明距离。与现有算法相比,该算法鲁棒性好,精度高,计算时间短,计算复杂度低。
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A novel iris recognition algorithm
Goal of the proposed iris recognition is to recognize human identity through the textural characteristics of one's iris muscular patterns. Even though eye color is dependent on heredity, in contrast to this, iris is independent and uncorrelated even for twins. Out of various biometrics such as finger and hand geometry, face, ear and voice recognition, iris recognition has been acknowledged as one of the most accurate biometric modalities because of its high recognition rate. In this proposed iris recognition method, pupil localization is done by using negative function and four neighbours method so that irrespective of pupil's contour, either circle or ellipse, the pupil's boundary is detected accurately. For iris outer boundary detection, contrast enhancement, special wedges and thresholding techniques are used to isolate the specific iris regions without eyelid and eyelash occlusions. Now the resultant iris portion alone is transformed into polar coordinate system for normalization process. Histogram equalization technique is used for enhancing the normalized iris image. For feature extraction and matching process, cumulative sum-based change analysis and hamming distance are employed. When compared with the existing algorithms, this proposed algorithm is robust, accurate and also has low computational time and complexity.
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