基于迁移学习算法的人眼图像个人细节分类

IF 0.8 Q4 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Cemal Aktürk, Emrah Aydemir, Yasr Mahdi Hama Rashid
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引用次数: 1

摘要

机器学习方法用于诸如通过训练数据集来解决特定问题来学习和估计从数据集寻求的特征或参数之类的目的。迁移学习方法旨在将人们从过去的知识和经验中继续学习的能力转移到计算机系统中,是将在解决特定问题时获得的知识转移到解决新问题中。与传统的机器学习方法相比,迁移学习中获得的学习提供了一些优势,这些优势在迁移学习的偏好中是有效的。在这项研究中,为了解决从眼睛图像中识别人的问题,共收集了96个不同人群的1980幅眼睛轮廓图像。这些收集到的数据按个人、年龄和性别进行了分类。在为眼睛识别进行的分类中,在Python程序中使用32种不同的迁移学习算法进行特征提取,并使用RandomForest算法进行人估计分类。根据研究结果,使用了30种不同的分类算法,其中ResNet50算法最为成功,数据还按年龄和性别进行了分类。因此,在个人、年龄和性别分类中,成功率分别为83.52%、96.41%和77.56%。研究表明,在不使用任何特殊设备的情况下,只需通过智能手机获得的眼睛图像就可以识别人,甚至可以确定人的年龄和性别等特征。此外,已经得出结论,眼睛图像可以用于比虹膜识别更高效和实用的生物特征识别系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Eye Images by Personal Details With Transfer Learning Algorithms
Machine learning methods are used for purposes such as learning and estimating a feature or parameter sought from a dataset by training the dataset to solve a particular problem. The transfer learning approach, aimed at transferring the ability of people to continue learning from their past knowledge and experiences to computer systems, is the transfer of the learning obtained in the solution of a particular problem so that it can be used in solving a new problem. Transferring the learning obtained in transfer learning provides some advantages over traditional machine learning methods, and these advantages are effective in the preference of transfer learning. In this study, a total of 1980 eye contour images of 96 different people were collected in order to solve the problem of recognizing people from their eye images. These collected data were classified in terms of person, age and gender. In the classification made for eye recognition, feature extraction was performed with 32 different transfer learning algorithms in the Python program and classified using the RandomForest algorithm for person estimation. According to the results of the research, 30 different classification algorithms were used, with the ResNet50 algorithm being the most successful, and the data were also classified in terms of age and gender. Thus, the highest success rates of 83.52%, 96.41% and 77.56% were obtained in person, age and gender classification, respectively. The study shows that people can be identified only by eye images obtained from a smartphone without using any special equipment, and even the characteristics of people such as age and gender can be determined. In addition, it has been concluded that eye images can be used in a more efficient and practical biometric recognition system than iris recognition.
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来源期刊
Acta Informatica Pragensia
Acta Informatica Pragensia Social Sciences-Library and Information Sciences
CiteScore
1.70
自引率
0.00%
发文量
26
审稿时长
12 weeks
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