移动设备上具有环境容忍度的人脸识别

P. J. Riesch, Xiaojiang Du, Haibin Ling, M. Mayhew
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引用次数: 2

摘要

人脸识别在身份验证方面最合理的应用之一是在移动手持设备上。然而,人脸识别在提供环境容忍度方面仍然面临挑战:由于用户携带移动电话设备到不同的位置,并且照明来源不同且不可预测,因此能够在进行身份验证的环境中补偿光线条件的变化。现有的人脸识别系统通过寻找相对于整个面部区域的信托点来运行,当它们不用于固定和控制光照条件的应用中时,这就成为它们的弱点。局部二值模式(LBP)是一种源自纹理分析的图像编码技术,旨在克服现有人脸识别系统所面临的问题,并提供对可变光照条件的容忍度。本研究旨在将LBP应用于“现成”的现代移动手持设备硬件上:仅利用当今移动手持设备上提供的最基本和广泛可用的机载成像硬件和处理能力。我们对LBP进行了严格的实验,在人脸图像的大型数据库上,以及开发手机软件,部署给真实用户,并在现场环境中进行了测试。我们的实验表明,LBP能够用于开发提供环境耐受性的人脸识别系统,有可能作为移动设备身份验证应用程序的一个组成部分找到实际用途。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Face Recognition with Environment Tolerance on a Mobile Device
One of the most logical applications of face recognition for authentication is on mobile handset devices. However, face recognition still faces challenges in providing environment tolerance: being able to compensate for changes in light conditions within an environment where authentication is occurring, due to users carrying their mobile handset devices to different locations with varying and unpredictable sources of illumination. Existing face recognition systems operate by finding fiduciary points relative to the area of the entire face, which becomes their weakness when they are not used in applications where light conditions are fixed and controlled. This research investigates Local Binary Patterns (LBP), an image encoding technique whose origins lie in texture analysis, in order to overcome the problems faced by existing face recognition systems and provide tolerance to variable light conditions. This research aims to utilize LBP on modern mobile handset device hardware that is "off-the-shelf": utilizing only the most basic and widely available onboard imaging hardware and processing capability provided on mobile handset devices of the present day. We have performed rigorous experimentation with LBP both on large databases of images of human faces, as well as developing mobile handset software that was deployed to real users and tested in a field environment. Our experimentation indicates that LBP is capable of being used to develop face recognition systems that provide environment tolerance, potentially finding practical use as a component of mobile device authentication applications.
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