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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Face recognition under pose variation with local Gabor features enhanced by Active Shape and Statistical Models
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Face recognition under pose variation with local Gabor features enhanced by Active Shape and Statistical Models

机译:活动形状和统计模型增强了具有局部Gabor特征的姿势变化下的人脸识别

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摘要

Face recognition is one of the most active areas of research in computer vision. Gabor features have been used widely in face identification because of their good results and robustness. However, the results of face identification strongly depend on how different are the test and gallery images, as is the case in varying face pose. In this paper, a new Gabor-based method is proposed which modifies the grid from which the Gabor features are extracted using a mesh to model face deformations produced by varying pose. Also, a statistical model of the scores computed by using the Gabor features is used to improve recognition performance across pose. Our method incorporates blocks for illumination compensation by a Local Normalization method, and entropy weighted Gabor features to emphasize those features that improve proper identification. The method was tested on the FERET and CMU-PIE databases. Our literature review focused on articles with face identification with wide pose variation. Our results, compared to those of the literature review, achieved the highest classification accuracy on the FERET database with 2D face recognition methods. The performance obtained in the CMU-PIE database is among those obtained by the best methods published. (C) 2015 Elsevier Ltd. All rights reserved.
机译:人脸识别是计算机视觉研究中最活跃的领域之一。 Gabor特征因其良好的结果和鲁棒性而被广泛用于人脸识别。但是,人脸识别的结果在很大程度上取决于测试图像和画廊图像的差异,就像人脸姿势不同的情况一样。在本文中,提出了一种新的基于Gabor的方法,该方法使用网格修改从网格中提取Gabor特征的网格,以建模由变化的姿势产生的面部变形。此外,通过使用Gabor特征计算出的得分的统计模型可用于改善跨姿势的识别性能。我们的方法结合了通过局部归一化方法进行照明补偿的块,以及熵加权的Gabor特征,以强调那些可以改善正确识别的特征。该方法在FERET和CMU-PIE数据库上进行了测试。我们的文献综述集中于具有宽姿势变化的面部识别的文章。与文献综述的结果相比,我们的结果在具有2D人脸识别方法的FERET数据库上实现了最高的分类精度。在CMU-PIE数据库中获得的性能是通过已发布的最佳方法获得的性能。 (C)2015 Elsevier Ltd.保留所有权利。

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