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Exploring Patterns of Gradient Orientations and Magnitudes for Face Recognition

机译:探索人脸识别的梯度方向和幅度模式

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摘要

A novel direction for efficiently describing face images is proposed by exploring the relationships between both gradient orientations and magnitudes of different local image structures. Presented in this paper are not only a novel feature set called patterns of orientation difference (POD) but also several improvements to our previous algorithm called patterns of oriented edge magnitudes (POEM). The whitened principal component analysis (PCA) dimensionality reduction technique is applied upon both the POEM- and POD-based representations to get more compact and discriminative face descriptors. We then show that the two methods have complementary strength and that by combining the two algorithms, one obtains stronger results than either of them considered separately. By experiments carried out on several common benchmarks, including the FERET database with both frontal and nonfrontal images as well as the very challenging LFW data set, we prove that our approach is more efficient than contemporary ones in terms of both higher performance and lower complexity.
机译:通过探索梯度方向和不同局部图像结构的大小之间的关系,提出了一种有效描述人脸图像的新颖方向。本文介绍的不仅是一种新颖的功能集,称为定向差模式(POD),而且还对我们以前的算法进行了一些改进,称为定向边缘幅度模式(POEM)。将白化的主成分分析(PCA)维数减少技术应用于基于POEM和POD的表示,以获得更紧凑和更具区分性的面部描述符。然后,我们证明这两种方法具有互补的优势,并且通过将两种算法结合起来,比单独考虑的任何一种方法获得的结果都更强。通过在几个常用基准上进行的实验,包括具有正面和非正面图像的FERET数据库以及极具挑战性的LFW数据集,我们证明了我们的方法在更高的性能和更低的复杂度方面比现代方法更有效。

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