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A Face Recognition Framework Based on the Integration of Eigenfaces Algorithm and Image Registration Technique

机译:基于特征性算法和图像配准技术的整合的人脸识别框架

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Today, face recognition systems play a crucial role in many access control and automatic identification systems. However, these systems still have shortcomings that reduce their performance efficiency. In this paper, a novel face recognition framework is introduced, combining the Eigenfaces algorithm and image registration. Firstly, the collected face images are preprocessed, then the Eigenfaces algorithm is applied to them for obtaining the reference eigenvectors. After that, three test images are captured using a webcam, and the images' faces are detected using the Viola-jones algorithm. The detected faces are registered to the collected face images, and the detected face with the lowest mean square error is selected for subsequent steps. Next, the selected detected face's eigenvector and the distance between it and reference eigenvectors are calculated, respectively. The minimum distance is then compared with a manual threshold to recognize the person as an unknown or known person. If the person is recognized as a known person, the person's identity is identified as the person belongs to the minimum distance. For validating the presented method, a public and an exclusive face image database are used. The obtained results indicate that the proposed framework achieved a better performance than traditional similarity-based methods to recognize known and unknown persons and identify known persons.
机译:如今,人脸识别系统在许多访问控制和自动识别系统中发挥着至关重要的作用。但是,这些系统仍然具有降低其性能效率的缺点。本文介绍了一种新的面部识别框架,组合了特征措施算法和图像配准。首先,收集的面部图像是预处理的,然后将特征缺陷算法应用于它们以获得参考特征向量。之后,使用网络摄像头捕获三个测试图像,使用Viola-Jones算法检测图像面。检测到的面部被登记到收集的面部图像,并且选择具有最低平均误差误差的检测面为后续步骤。接下来,分别计算所选择的检测到的面部的特征向量和其之间的距离和参考特征向量。然后将最小距离与手动阈值进行比较,以将人识别为未知或已知人。如果该人被认为是已知人,则该人的身份被确定为人属于最低距离。为了验证所提出的方法,使用公共和独占面部图像数据库。所获得的结果表明,拟议的框架比以传统的基于相似性的方法实现了更好的性能,以识别已知和未知的人并识别已知人员。

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