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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >On the selection of 2D Krawtchouk moments for face recognition
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On the selection of 2D Krawtchouk moments for face recognition

机译:关于用于人脸识别的2维Krawtchouk矩的选择

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Sparse representation of images using orthogonal two-dimensional Krawtchouk moments (2D KCMs) for face recognition is motivated by their ability to capture region-based higher-order hidden nonlinear structures from discrete coordinates of finitely supported images and the invariance of affine transformations of these moments to common geometric distortions. This paper presents the effectiveness of selecting the discriminatory set of KCMs as the global and local face features as opposed to traditional features obtained from heuristic choice of fixed-order moments or projection of the moments for recognizing an identity. The selection of significantly sparse 2D KCM-based features according to the proposed approach results in highly efficient face recognition method as compared to the other methods that use orthogonal moments such as the 2D Zernike, 2D Tchebichef or 2D Gaussian-Hermite. Experiments on challenging databases (viz., FRGC and CK-AUC) and comparisons with the well established projection, texture, and moment-based methods indicate superior recognition performance in terms of mean accuracy and robustness of the proposed holistic- or hybrid-type discriminative KCM-based method, especially when sample sizes are small and the intraclass faces have significant variations due to expressions. (C) 2016 Elsevier Ltd. All rights reserved.
机译:使用正交二维Krawtchouk矩(2D KCM)进行人脸识别的图像稀疏表示是由于它们能够从有限支持的图像的离散坐标中捕获基于区域的高阶隐藏非线性结构的能力,以及这些矩的仿射变换的不变性常见的几何变形。本文介绍了选择歧视性的KCM集作为全局和局部人脸特征的有效性,这与从固定顺序矩的启发式选择或识别身份的矩的投影中获得的传统特征相反。与其他使用正交矩的方法(例如2D Zernike,2D Tchebichef或2D Gaussian-Hermite)相比,根据建议的方法选择的基于2D KCM的稀疏稀疏特征将导致高效的人脸识别方法。在具有挑战性的数据库(即FRGC和CK-AUC)上进行的实验以及与完善的投影,纹理和基于矩的方法的比较表明,在提出的整体或混合类型判别方法的平均准确性和鲁棒性方面,它们具有出色的识别性能基于KCM的方法,尤其是在样本量较小且类内面孔由于表达式而有明显差异时。 (C)2016 Elsevier Ltd.保留所有权利。

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