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IFRS: An Indexed Face Recognition System Based on Face Recognition and RFID Technologies

机译:IFRS:基于面部识别和RFID技术的索引面部识别系统

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Access control systems are in contact with humans in everyday life, it is used in buildings, smartphones, cars, and IoT. Access control systems became an active research area. The performance of an access control system is specified by its speed and accuracy. Biometric systems are powerful access control systems which use humans’ biological or physiological properties to provide access to the restricted data or area. From all of the many biometric system types, the face recognition system is the only type that is delivering the automatic property. Moreover, it is the most acceptable type of biometric systems to the humans. The main challenges in the face recognition system are the degradation of the speed and accuracy when the system database grew bigger. This is because the face recognition system is an identification system that adopts a one to many (1:M) relationship. As a result, there is a need to develop a system with one to one (1:1) relationship, which is a challenging process. Motivated by such challenge, this paper proposes a system called Indexed Face Recognition System (IFRS) which is based on the combination of face recognition technology and Radio Frequency Identification technology. IFRS uses Local Binary Pattern Histogram as a feature vector and Haar-cascade classifier for the face detection. Moreover, the system is enhanced with three pre-processing methods namely: Bilateral filter, Histogram Equalization, and applying Tan and Triggs’ algorithm. In addition, IFRS performs an image normalization processes before and after Face Detection phase to enhance images quality, these process are: Color Conversion and Image Cropping and Resizing. Two experiments were done. The first experiment was done on 400 images with 40 subjects (10 images per subject). The second experiment was done on 210 collected images for 21 subjects (10 images per subject) from University students as a real-life case study. The practical results demonstrates that 4?×?4 image divisions gives better results than 8?×?8 image divisions as far as recognition time, database access time, and storage capacity are concerned. The practical results show that IFRS can reach an accuracy of 100% with a very little amount of time delay that is negligible.
机译:访问控制系统在日常生活中与人类接触,它用于建筑物,智能手机,汽车和物联网。访问控制系统成为一个活跃的研究区域。访问控制系统的性能由其速度和准确性指定。生物识别系统是强大的访问控制系统,它使用人类的生物或生理特性来提供对受限制数据或区域的访问。来自所有众多生物识别系统类型,人脸识别系统是唯一提供自动属性的类型。此外,它是人类最可接受的生物识别系统。面部识别系统的主要挑战是系统数据库变大时速度和准确性的劣化。这是因为面部识别系统是一种识别系统,其采用一个到许多(1:m)的关系。结果,需要一种具有一个(1:1)关系的系统,这是一个具有挑战性的过程。本文推动了这种挑战,本文提出了一种称为索引面部识别系统(IFRS)的系统,其基于面部识别技术和射频识别技术的组合。 IFRS使用本地二进制图案直方图作为面部检测的特征向量和Haar级联分类器。此外,系统具有三种预处理方法,即:双边滤波器,直方图均衡和应用TAN和TRIGGS算法。此外,IFRS在面部检测阶段之前和之后执行图像归一化过程以增强图像质量,这些过程是:颜色转换和图像裁剪和调整大小。完成了两个实验。第一个实验是在400个图像上进行的40个受试者(每个受试者10张图像)进行。第二种实验是在210个收集的图像中进行的21个受试者(每个受试者10张图像),从大学生作为真实案例研究。实际结果表明,4?×4图像分割给出了比8?×8图像分开的更好的结果,只要识别时间,数据库访问时间和存储容量就会。实际结果表明,IFRS可以达到100%的准确性,时间延迟很少可忽略不计。

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