People Recognition via Tongue Print Using Deep and Machine Learning

Ahmed Shallal Obaid, Mohammed Y. Kamil, B. H. Hamza
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Abstract

The tongue is a unique organ that is well protected inside the mouth and not affected by external factors; it is also difficult to forge. Several biometric systems are widely used for authentication and recognition, such as fingerprints, faces, iris, sound, retina, etc. Traditional biometrics represent a challenge and an obstacle as they can be falsified, duplicates can be made (e.g., iris, face, fingers, signature), or they are expensive and rarely used (e.g., DNA). The increased security measures called for modern biometrics that is more secure, less expensive, and cannot be falsified. As a result, the goal of this paper is to create a system for distinguishing people based on their tongue prints. It will contribute to solving many forensic issues and increasing electronic security because it has features suitable for identification and biometrically distinguishing between people. In this paper, the tongue is located based on the fixed window size method. After tongue localization (ROI), feature extraction using the VGG-16 model, and a classification system that uses both transfer learning and machine learning as VGG-16, XGBoost, KNN, and RF classifiers, extracted features are then trained for personal identification. The dataset consisted of 1085 tongue images of 138 people with a test ratio of 20%, and the results achieved an accuracy of 92%. The process of distinguishing people through tongue prints has proven to be effective and accurate.
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使用深度和机器学习通过舌印识别人
舌头是一个独特的器官,在口腔内部受到很好的保护,不受外部因素的影响;它也很难锻造。几种生物识别系统被广泛用于身份验证和识别,如指纹、人脸、虹膜、声音、视网膜等。传统的生物识别技术是一种挑战和障碍,因为它们可能被伪造、复制(例如虹膜、人脸、手指、签名),或者价格昂贵且很少使用(例如DNA)。加强的安全措施要求现代生物识别技术更安全、更便宜、不可伪造。因此,本文的目标是创建一个基于舌头指纹来区分人的系统。它将有助于解决许多法医学问题和提高电子安全,因为它具有适合识别和生物识别人的特征。在本文中,舌片的定位是基于固定窗口大小的方法。在舌头定位(ROI)、使用VGG-16模型的特征提取以及使用迁移学习和机器学习作为VGG-16、XGBoost、KNN和RF分类器的分类系统之后,提取的特征随后被训练用于个人识别。该数据集由138人的1085张舌头图像组成,测试率为20%,结果的准确率为92%。通过舌印识别人的过程已被证明是有效和准确的。
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