Recognition of Tongue Print Biometric using Oriented FAST and Rotated BRIEF (ORB)

M. V. Caya, Arthur Reimus D. Lechoncito, Gabriel Q. Deveraturda
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Abstract

The main goal of this study is to create a tongue print biometric system that utilizes the Oriented FAST and Rotated BRIEF (ORB) algorithm for feature extraction. The tongue print biometric system utilizes a Raspberry Pi as the microcontroller and acquires the image of tongue prints using a Raspberry Pi Camera with a Sony IMX219 8-megapixel sensor. The system initially captures the user’s tongue’s image and then uses the Contrast Limited Adaptive Histogram Equalization (CLAHE) for image pre-processing. Afterward, the ORB algorithm is used to extract the features on the Region of Interest, and then it computes the image descriptors. The descriptors are then stored in a database along with the user’s information. The data collection included thirty (30) authentic test subjects, where twenty (20) tongue prints were collected from the authentic users to train the prototype. After training, the system was tested five times on every authentic and impostor user, where the determined overall accuracy was 90.33%. Also, during the test on authentic users, the determined overall average recognition time speed of the tongue print biometric was 10.087 and the determined overall average recognition time speed when the biometric system was tested on an impostor was 10.1551 seconds. The integration of FAST and rBRIEF to ORB allowed the feature extraction algorithm to extract plenty of distributed feature points and load them fast, which led to the satisfactory accuracy rate and recognition time speeds of the tongue print biometric system.
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基于定向FAST和旋转BRIEF (ORB)的舌纹生物特征识别
本研究的主要目的是建立一个利用定向快速和旋转简短(ORB)算法进行特征提取的舌印生物识别系统。舌印生物识别系统以树莓派为微控制器,使用带有索尼IMX219 800万像素传感器的树莓派相机获取舌印图像。该系统首先捕获用户舌头的图像,然后使用对比度有限自适应直方图均衡化(CLAHE)进行图像预处理。然后,使用ORB算法提取感兴趣区域上的特征,然后计算图像描述符。然后将描述符与用户信息一起存储在数据库中。数据收集包括三十(30)个真实的测试对象,其中从真实用户那里收集了二十(20)个舌印来训练原型。训练后,系统对每个真实用户和冒名顶替用户进行了五次测试,确定的总体准确率为90.33%。此外,在真实用户的测试中,舌印生物识别系统确定的总体平均识别时间速度为10.087秒,而在冒名顶替者的测试中,生物识别系统确定的总体平均识别时间速度为10.1551秒。将FAST和rBRIEF集成到ORB中,使得特征提取算法可以提取大量的分布式特征点并快速加载,从而使舌印生物识别系统的准确率和识别时间速度令人满意。
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