Kang Byung Jun, Park Kang Ryoung
Department of Computer Science, Sangmyung University, Seoul 110-743, Korea.
IEEE Trans Syst Man Cybern B Cybern. 2007 Dec;37(6):1555-66. doi: 10.1109/tsmcb.2007.907042.
In the field of biometrics, it has been reported that iris recognition techniques have shown high levels of accuracy because unique patterns of the human iris, which has very many degrees of freedom, are used. However, because conventional iris cameras have small depth-of-field (DOF) areas, input iris images can easily be blurred, which can lead to lower recognition performance, since iris patterns are transformed by the blurring caused by optical defocusing. To overcome these problems, an autofocusing camera can be used. However, this inevitably increases the cost, size, and complexity of the system. Therefore, we propose a new real-time iris image-restoration method, which can increase the camera's DOF without requiring any additional hardware. This paper presents five novelties as compared to previous works: 1) by excluding eyelash and eyelid regions, it is possible to obtain more accurate focus scores from input iris images; 2) the parameter of the point spread function (PSF) can be estimated in terms of camera optics and measured focus scores; therefore, parameter estimation is more accurate than it has been in previous research; 3) because the PSF parameter can be obtained by using a predetermined equation, iris image restoration can be done in real-time; 4) by using a constrained least square (CLS) restoration filter that considers noise, performance can be greatly enhanced; and 5) restoration accuracy can also be enhanced by estimating the weight value of the noise-regularization term of the CLS filter according to the amount of image blurring. Experimental results showed that iris recognition errors when using the proposed restoration method were greatly reduced as compared to those results achieved without restoration or those achieved using previous iris-restoration methods.
在生物识别领域,据报道,虹膜识别技术已显示出很高的准确率,因为它利用了人类虹膜具有非常多自由度的独特模式。然而,由于传统的虹膜相机景深(DOF)区域较小,输入的虹膜图像很容易模糊,这可能导致识别性能下降,因为虹膜模式会因光学散焦引起的模糊而发生变化。为了克服这些问题,可以使用自动对焦相机。然而,这不可避免地会增加系统的成本、尺寸和复杂性。因此,我们提出了一种新的实时虹膜图像恢复方法,该方法可以增加相机的景深,而无需任何额外的硬件。与以前的工作相比,本文提出了五个新颖之处:1)通过排除睫毛和眼睑区域,可以从输入的虹膜图像中获得更准确的对焦分数;2)可以根据相机光学原理和测量的对焦分数来估计点扩散函数(PSF)的参数;因此,参数估计比以前的研究更准确;3)由于可以通过使用预定方程获得PSF参数,因此可以实时进行虹膜图像恢复;4)通过使用考虑噪声的约束最小二乘(CLS)恢复滤波器,可以大大提高性能;5)还可以根据图像模糊量估计CLS滤波器的噪声正则化项的权重值,从而提高恢复精度。实验结果表明,与未进行恢复或使用以前的虹膜恢复方法所获得的结果相比,使用所提出的恢复方法时虹膜识别错误大大减少。