一种多算法人脸识别系统

Soumitra Kar, Swati Hiremath, Dilip G. Joshi, Vinod.K. Chadda, Apurva Bajpai
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引用次数: 39

摘要

在目前全球安全关注的情况下,利用生物识别技术建立个人真实性和检测冒名顶替者的重要性日益增加。发展一套个人识别生物识别系统,以满足安全区域的出入管制,以及社会福利、罪案侦缉、自动柜员机存取、电脑保安等其他应用的需求,是当今的需要。在过去的二十多年里,人脸识别作为一种方便的人类身份验证的生物识别模式已经发展起来。世界各地的几家供应商声称他们的面部识别系统工作成功。然而,由美国国家标准与技术研究所(NISI)进行的人脸识别供应商测试(FRVT)表明,商业人脸识别系统在现实生活中无处不在的变化下表现不达标。迄今为止,一个被广泛接受的健壮的人脸识别系统的可用性被证明是难以捉摸的。考虑到本地发展生物识别系统以满足BARC和国内其他地方的需要的重要性,已开始发展基于面部的生物识别认证系统。在本文中,我们讨论了我们在开发一个人脸识别系统方面所做的努力,该系统在一个合理约束的面部图像采集设置下成功运行。本实验室建立的原型系统利用多算法多生物识别技术,将灰度统计相关方法与主成分分析(PCA)或离散余弦变换(DCT)技术相结合来寻找面部匹配,以提高系统性能。自动检测图像中的人脸并对其进行粗尺度校正后,提取其PCA和DCT特征。将提取的签名与引用集进行比较,选择命中次数最多的5个签名集。首先利用模板匹配技术定位眼睛,然后求出眼间距离,从而确定每个命中点的准确面部尺度。将人脸插值到精确的尺度后,根据人脸上多个特征的灰度相关性计算匹配分数。最终的识别决定是在这五张脸中做出的,取决于得分最高。我们已经在一组属于43个对象的109张图片上测试了这项技术,其中有男性也有女性。在该图像集上的结果表明,我们的技术成功率为89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multi-Algorithmic Face Recognition System
The importance of utilising biometrics to establish personal authenticity and to detect impostors is growing in the present scenario of global security concern. Development of a biometric system for personal identification, which fulfills the requirements for access control of secured areas and other applications like identity validation for social welfare, crime detection, ATM access, computer security, etc. is felt to be the need of the day. Face recognition has been evolving as a convenient biometric mode for human authentication for more than last two decades. Several vendors around the world claim the successful working of their face recognition systems. However, the Face Recognition Vendor Test (FRVT) conducted by the National Institute of Standards and Technology (NISI), USA, indicates that the commercial face recognition systems do not perform up to the mark under the variations ubiquitously present in a real-life situation. Availability of a largely accepted robust face recognition system has proved elusive so far. Keeping in view the importance of indigenous development of biometric systems to cater to the requirements at BARC and elsewhere in the country, the work was started on the development of a face-based biometric authentication system. In this paper, we discuss our efforts in developing a face recognition system that functions successfully under a reasonably constrained set-up for facial image acquisition. The prototype system built in our lab finds facial match by utilizing multi-algorithmic multi-biometric technique, combining gray level statistical correlation method with Principal Component Analysis (PCA) or Discrete Cosine Transform (DCT) techniques in order to boost our system performance. After automatic detection of the face in the image and its gross scale correction, its PCA and DCT signatures are extracted. Based on a comparison of the extracted signature with the set of references, the set of top five hits are selected. Exact scale of the face is ascertained w.r.t. each of these hits by first locating the eyes employing template matching technique and then finding the inter-ocular distance. After interpolating the face to the exact scale, matching scores are computed based on gray level correlation of a number of features on the face. Final identification decision is taken amongst this set of five faces, depending on the highest score. We have tested the technique on a set of 109 images belonging to 43 subjects, both male and female. The result on this image-set indicates 89% success rate of our technique.
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