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Fusion of local normalization and Gabor entropy weighted features for face identification

机译:融合局部归一化和Gabor熵加权特征进行人脸识别

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摘要

Face recognition is one of the most extensively studied topics in image analysis because of its wide range of possible applications such as in surveillance, access control, content-based video search, human– computer interaction, electronic advertisement and more. Face identification is a one-to-n matching problem where a captured face is compared to n samples in a database. In this work we propose two new methods for face identification. The first one combines entropy-like weighted Gabor features with the local normalization of Gabor features. The second fuses the entropy-like weighted Gabor features at the score level with the local binary pattern (LBP) applied to the magnitude (LGBP) and phase (LGXP) components of the Gabor features. We used the FERET, AR, and FRGC 2.0 databases to test and compare our results with those previously published. Results on these databases show significant improvement relative to previously published results, reaching the best performance on the FERET and AR databases. Our methods also showed significant robustness to slight pose variations. We tested the proposed methods assuming noisy eye detection to check their robustness to inexact face alignment. Results show that the proposed methods are robust to errors of up to 3 pixels in eye detection.
机译:人脸识别是图像分析中研究最广泛的主题之一,因为它在监视,访问控制,基于内容的视频搜索,人机交互,电子广告等方面的广泛应用。人脸识别是一对一的匹配问题,其中将捕获的人脸与数据库中的n个样本进行比较。在这项工作中,我们提出了两种新的人脸识别方法。第一个将类似熵的加权Gabor特征与Gabor特征的局部归一化相结合。第二种方法在分数级别上融合了类似熵的加权Gabor特征,并将局部二进制模式(LBP)应用于Gabor特征的幅度(LGBP)和相位(LGXP)分量。我们使用了FERET,AR和FRGC 2.0数据库来测试我们的结果并将其与以前发布的结果进行比较。这些数据库的结果显示出相对于以前发布的结果而言有显着改进,在FERET和AR数据库上达到了最佳性能。我们的方法还显示出显着的鲁棒性,以应对轻微的姿势变化。我们在假设嘈杂的眼睛检测的情况下测试了所提出的方法,以检查其对不精确的面部对齐的鲁棒性。结果表明,所提出的方法对于眼部检测中高达3个像素的误差具有鲁棒性。

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