Department of Computer Engineering, NBN Sinhgad School of Engineering, Ambegaon, Pune, India.
Bharath University, Chennai600073, India.
Biomed Tech (Berl). 2021 Feb 22;66(2):167-180. doi: 10.1515/bmt-2019-0241. Print 2021 Apr 27.
Iris Recognition at-a Distance (IAAD) is a major challenge for researchers due to the defects associated with the visual imaging and poor image quality in dynamic environments, which imposed bad impacts on the accuracy of recognition. Thus, in order to enable the effective IAAD, this paper proposes a new method, named, Chronological Monarch Butterfly Optimization (Chronological MBO)-enabled Neural Network (NN). The recognition of iris using NN is trained with the proposed Chronological MBO, which is developed through the combination of Chronological theory in Monarch Butterfly Optimization (MBO). The recognition becomes effective with the automatic segmentation and the normalization of iris image on the basis of Hough Transform (HT) and Daugman's rubber sheet model followed with the process of feature extraction with the developed ScatT-LOOP descriptor, which is the integration of scattering transform (ST), Local Optimal Oriented Pattern (LOOP) descriptor, and Tetrolet transform (TT). The developed ScatT-LOOP descriptor extracts the texture as well as the orientation details of image for effective recognition. The analysis is evaluated with the CASIA Iris dataset with respect to the evaluation metrics, accuracy, False Acceptance Rate (FAR), and False Rejection Rate (FRR). The proposed method has the accuracy, FRR, and FAR of 0.97, 0.005, and 0.005, respectively. The experimental results proved that the proposed method is effective than the existing methods of iris recognition.
远距离虹膜识别(IAAD)是研究人员面临的主要挑战,因为它与视觉成像和动态环境中的图像质量差有关,这对识别的准确性产生了不良影响。因此,为了实现有效的 IAAD,本文提出了一种新方法,名为基于时间顺序的帝王斑蝶优化(Chronological MBO)的神经网络(NN)。使用 NN 进行虹膜识别的训练是通过结合帝王斑蝶优化(MBO)中的时间顺序理论来开发的 Chronological MBO。通过霍夫变换(HT)和 Daugman 的橡胶片模型实现虹膜图像的自动分割和归一化,并结合开发的 ScatT-LOOP 描述符进行特征提取,该描述符是散射变换(ST)、局部最优定向模式(LOOP)描述符和 Tetrolet 变换(TT)的集成,识别变得有效。开发的 ScatT-LOOP 描述符提取图像的纹理和方向细节,以实现有效识别。该分析通过 CASIA Iris 数据集,针对评估指标(准确性、误报率(FAR)和误拒率(FRR))进行评估。所提出的方法具有 0.97 的准确率、0.005 的误报率和 0.005 的误拒率。实验结果证明,与现有的虹膜识别方法相比,该方法是有效的。