基于radon变换的人脸识别视网膜图像处理新方法

A. Zahedi, H. Sadjedi, A. Behrad
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引用次数: 6

摘要

视网膜图像的血管具有独特的模式,从眼到眼,从人到人。我们利用这一特性设计了一种新的人物识别系统。该方法将重点放在光盘周围的血管上,而不是提取视网膜的全部血液,以优化计算成本。首先,利用模板匹配技术对光盘进行定位,并利用模板匹配技术将视网膜图像旋转到参考位置;该方法补偿了扫描过程中可能产生的旋转效应,选择了光盘周围的圆形感兴趣区域。接下来,通过极坐标变换从每个ROI创建一个旋转不变模板。在下一阶段,每个模板中的血管都得到增强。在我们的方法中,Radon变换用于特征定义。最后采用一维离散傅里叶变换和欧氏距离进行特征匹配。在DRIVE数据库的一张200张图像上对该算法进行了测试[9]。在数据库上的实验结果表明,我们的识别系统的平均识别率等于100%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new retinal image processing method for human identification using radon transform
The blood vessels of retinal image have a unique pattern, from eye to eye and person to person. We have used this trait for designed a new person identification system. This approach focused on blood vessels around the optical disc instead of extracting total retinal blood to optimize the computational cost. At first, optical disc is localized using template matching technique and uses it to rotate the retinal image to reference position. This process compensate the rotation effects which might occur during scanning process then a circular region of interest (ROI) around optical disc is selected. Next, a rotation invariant template is created from each ROI by a polar transformation. In the next stage, vessels from each template are enhanced. Radon transform is used for feature definition in our method. Finally we employ 1D discrete Fourier transform and Euclidian distance for feature matching. The proposed algorithm was tested on a 200 image from DRIVE database [9]. Experimental results on the database demonstrated an average identification rate equal to 100 percent for our identification system.
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