Kumawat Anchal, Panda Sucheta
Department of Computer Application, Veer Surendra Sai University of Technology (VSSUT), Burla, Sambalpur, Odisha 768018 India.
Multidimens Syst Signal Process. 2023;34(1):47-79. doi: 10.1007/s11045-022-00852-w. Epub 2022 Sep 28.
In an automated iris recognition system, in order to get higher accuracy, we should have an efficient iris segmentation process. The reliability of accurate "iris recognition" system largely depends on the accuracy of segmentation process. Traditional "iris segmentation" methods are unable to detect the exact boundaries of iris and pupil, which is time consuming and also highly sensitive to noise. To overcome these problems, we have proposed an improved Wildes method (IWM) for segmentation in iris recognition system. The proposed algorithm consists of two major steps before applying Wildes method for segmentation: edge detection of iris and pupil from a noisy eye image with improved Canny with fuzzy logic (ICWFL) and removal of unwanted noise from above step with a hybrid restoration fusion filter (HRFF). A comparative study of various edge detection techniques is performed to prove the efficiency of ICWFL method. Similarly, the proposed method is tested with various noise densities from 10 to 95 dB. Also the working of the proposed HRFF is compared with some existing smoothing filters. Various experiments have been performed with the help of iris database of IIT_Delhi. Both visual and numerical results prove the efficiency of the proposed algorithm.
在自动虹膜识别系统中,为了获得更高的准确率,我们应该有一个高效的虹膜分割过程。精确的“虹膜识别”系统的可靠性在很大程度上取决于分割过程的准确性。传统的“虹膜分割”方法无法检测到虹膜和瞳孔的精确边界,既耗时又对噪声高度敏感。为了克服这些问题,我们提出了一种改进的Wildes方法(IWM)用于虹膜识别系统中的分割。所提出的算法在应用Wildes方法进行分割之前包括两个主要步骤:使用改进的带模糊逻辑的Canny算法(ICWFL)从有噪声的眼睛图像中检测虹膜和瞳孔的边缘,以及使用混合恢复融合滤波器(HRFF)去除上一步中的不需要的噪声。进行了各种边缘检测技术的对比研究以证明ICWFL方法的有效性。同样,所提出的方法在10至95分贝的各种噪声密度下进行了测试。此外,还将所提出的HRFF的工作与一些现有的平滑滤波器进行了比较。借助于印度理工学院德里分校的虹膜数据库进行了各种实验。视觉和数值结果均证明了所提出算法的有效性。