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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Illumination Invariant Face Recognition Using Near-Infrared Images
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Illumination Invariant Face Recognition Using Near-Infrared Images

机译:使用近红外图像的照明不变人脸识别

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Most current face recognition systems are designed for indoor, cooperative-user applications. However, even in thus-constrained applications, most existing systems, academic and commercial, are compromised in accuracy by changes in environmental illumination. In this paper, we present a novel solution for illumination invariant face recognition for indoor, cooperative-user applications. First, we present an active near infrared (NIR) imaging system that is able to produce face images of good condition regardless of visible lights in the environment. Second, we show that the resulting face images encode intrinsic information of the face, subject only to a monotonic transform in the gray tone; based on this, we use local binary pattern (LBP) features to compensate for the monotonic transform, thus deriving an illumination invariant face representation. Then, we present methods for face recognition using NIR images; statistical learning algorithms are used to extract most discriminative features from a large pool of invariant LBP features and construct a highly accurate face matching engine. Finally, we present a system that is able to achieve accurate and fast face recognition in practice, in which a method is provided to deal with specular reflections of active NIR lights on eyeglasses, a critical issue in active NIR image-based face recognition. Extensive, comparative results are provided to evaluate the imaging hardware, the face and eye detection algorithms, and the face recognition algorithms and systems, with respect to various factors, including illumination, eyeglasses, time lapse, and ethnic groups
机译:当前大多数人脸识别系统都是为室内合作用户应用而设计的。然而,即使在如此受限的应用中,大多数现有的系统,无论是学术系统还是商业系统,都会由于环境照明的变化而影响准确性。在本文中,我们提出了一种针对室内合作用户应用的照明不变面部识别的新颖解决方案。首先,我们提出了一种主动的近红外(NIR)成像系统,无论环境中的可见光如何,都能产生状态良好的人脸图像。其次,我们证明了所得的人脸图像编码人脸的内在信息,仅对灰度进行单调变换。基于此,我们使用局部二进制模式(LBP)功能来补偿单调变换,从而得出照明不变的面部表示。然后,我们提出了使用近红外图像进行人脸识别的方法。统计学习算法用于从一大堆不变的LBP特征中提取最具区别性的特征,并构建高度准确的人脸匹配引擎。最后,我们提出了一种在实践中能够实现准确快速的人脸识别的系统,其中提供了一种方法来处理有源近红外光在眼镜上的镜面反射,这是基于有源近红外图像的人脸识别的关键问题。提供广泛的比较结果,以针对各种因素(包括照明,眼镜,时间间隔和种族)评估成像硬件,面部和眼睛检测算法以及面部识别算法和系统

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