Akram M Usman, Abdul Salam Anum, Khawaja Sajid Gul, Naqvi Syed Gul Hassan, Khan Shoab Ahmed
Department of Computer & Software Engineering, National University of Sciences and Technology Islamabad, Pakistan.
Department of Mechanical Engineering, National University of Sciences and Technology Islamabad, Pakistan.
Data Brief. 2020 Oct 20;33:106433. doi: 10.1016/j.dib.2020.106433. eCollection 2020 Dec.
The paper describes a dataset, entitled Retina Identification Database (RIDB). The stated dataset contains Retinal fundus images acquired using Fundus imaging camera TOPCON-TRC 50 EX. The abovementioned dataset holds a significant position in retinal recognition and identification. Retinal recognition is considered as one of the reliable biometric recognition features. Biometric recognition has become an integral part of any organization's security department. Before biometrics, the information was secured through passwords, pin keys, etc. However, the fear of decryption and hacking retained. Biometric verification includes behavioural (voice, signature, gait), morphological (Fingerprint, face, palm print, retina) and biological (Odour, saliva, DNA) features [1]. Amongst all of them, retina based identification is considered as the spoof proof and most accurate identification system. Since the retina is embedded inside the eye thus is least affected by the outer environment and retain in its original state. Moreover, the vascular pattern in the retina is unique and remains unchanged during the entire life span. The data presented in the paper is composed of 100 retinal images of 20 individuals (5 images were captured from each patient). The dataset is supported by research work [2] and [7]. These research papers proposed retinal recognition algorithms for biometric verification and identification. The proposed method utilized both vascular and non-vascular features for identification and yields recognition rates of 100 % and 92.5% respectively.
本文描述了一个名为视网膜识别数据库(RIDB)的数据集。所述数据集包含使用TOPCON - TRC 50 EX眼底成像相机采集的视网膜眼底图像。上述数据集在视网膜识别领域占据重要地位。视网膜识别被视为可靠的生物特征识别特征之一。生物特征识别已成为任何组织安全部门不可或缺的一部分。在生物识别技术出现之前,信息是通过密码、PIN码等方式来保护的。然而,人们仍然担心信息被解密和黑客攻击。生物特征验证包括行为特征(语音、签名、步态)、形态特征(指纹、面部、掌纹、视网膜)和生物特征(气味、唾液、DNA)[1]。在所有这些特征中,基于视网膜的识别被认为是防欺骗且最准确的识别系统。由于视网膜位于眼睛内部,因此受外部环境影响最小,并保持其原始状态。此外,视网膜中的血管模式是独特的,并且在整个生命周期内保持不变。本文所呈现的数据由20个人的100张视网膜图像组成(从每位患者采集5张图像)。该数据集得到了研究工作[2]和[7]的支持。这些研究论文提出了用于生物特征验证和识别的视网膜识别算法。所提出的方法利用血管和非血管特征进行识别,识别率分别为100%和92.5%。