利用微调深度学习,通过舌印识别人

Ahmed Shallal Obaid, Mohammed Y. Kamil, B. H. Hamza
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引用次数: 0

摘要

许多个人验证系统在安全系统中是至关重要的,用于验证使用各种技术向特定人员打开的门的通道。人们可以使用电子支付方式和安全应用程序来生成快速、远程金融交易的代码。旧的系统要求精度和速度。通过技术和人工智能开发了许多替代方法,使此类操作变得简单快捷。本文讨论了舌印的识别问题。舌印就像指纹一样,对每个人来说都是独一无二的。在这项研究中使用舌头是因为它在这些器官中是独一无二的。舌头被嘴唇保护着。这可以防止强行取舌印。有些人会扭曲指纹,使指纹识别系统无法识别他们。车祸会导致面部变形,使系统无法识别面部指纹,因此本研究采用舌头作为指纹。一个包含138名穆斯坦西里亚大学理学院学生的1104张照片的数据库平均得出每人8张照片。VGG16实现了迁移学习和微调。与以往的研究相比,准确率达到91%以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
People identification via tongue print using fine-tuning deep learning
Many person-verification systems are critical in security systems for verifying passage through doors opened to specific people using various techniques. People can use electronic payment methods and security apps to generate codes for quick, remote financial transactions. Older systems required precision and speed. Many alternative methods were developed by technology and artificial intelligence to make such operations simple and quick. The identification of tongue prints is discussed in this paper. Tongue prints, like fingerprints, are unique to each individual. The tongue was used in this study because it is unique among such organs. The tongue is protected by the lips. This guards against taking a tongue print by force. Some people distort their fingerprints, making fingerprint recognition systems unable to recognize them. Car accidents cause facial distortion, which distorts the system and prevents it from distinguishing facial prints, so the tongue was used as a fingerprint in this study. A database of 1,104 images for 138 Mustansiriyah University College of Science students yielded an average of eight images per individual. VGG16 was implemented for transfer learning and fine-tuning. In comparison to previous studies, the accuracy achieved was more than 91%.
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