Biometric Personal Iris Recognition from an Image at Long Distance

Swati D. Shirke, C. Rajabhushnam
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引用次数: 6

Abstract

Now a days, Iris recognition is mostly used in biometrics for personal identification. It is the most powerful tool for person identification. But in real time it is quite difficult to capture the better quality of iris images. The images obtained are more degraded due to the lack of texture, blur. In this paper, a simple high instability technique is presented also this process is more convenient to use. This super-resolution algorithm is applied to the pixels of iris images to select the best frame from the iris image. A segmentation algorithm that segments the input iris images. Spatial FCM used for segmentation testing purpose. Iris image is framing 600 x 600 in sequence to calculate vessel area in each framework using for pattern abstraction using loop descriptor. The Hough transforms cast-off de-noising the image. The experimental results show that this proposed system successfully recognizes the iris about 4 to 8 meters long distance of a person. This proposed work is developed on MATLAB for “reading” the profile also for completing the Hough transforms performance. The database used for this purpose is CASIA V4. The simulation results show that the stable extraction of iris recognition.
远距离图像生物识别个人虹膜
如今,虹膜识别主要用于个人身份识别的生物识别技术。它是最强大的身份识别工具。但在实时情况下,很难获得高质量的虹膜图像。所获得的图像由于缺乏纹理、模糊而较差。本文提出了一种简单的高不稳定性工艺,该工艺更便于使用。将该超分辨率算法应用于虹膜图像像素,从虹膜图像中选择最佳帧。分割算法,分割输入虹膜图像。空间FCM用于分割测试目的。虹膜图像按600 × 600的顺序分帧,使用循环描述符进行模式抽象,计算每个框架中的血管面积。霍夫变换对图像进行去噪。实验结果表明,该系统能够成功地识别出4 ~ 8米远的人的虹膜。这项工作是在MATLAB上开发的,用于“读取”剖面,也用于完成霍夫变换性能。用于此目的的数据库是CASIA V4。仿真结果表明,提取的虹膜识别效果稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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