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Spatial pyramid face feature representation and weighted dissimilarity matching for improved face recognition

机译:空间金字塔人脸特征表示和加权不相似匹配以改善人脸识别

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摘要

In this paper, we present a novel face recognition (FR) algorithm based on multiresolution spatial pyramid. In our method, a face is subdivided into increasingly finer subregions (local regions) and represented at multiple levels of histogram representations. To address image misalignment problem, overlapped patch-based local descriptor extraction has been also developed in an effective way. To preserve multiple levels of detail in facial local characteristics and to encode holistic spatial configuration, face features obtained for concatenated histograms (coming from all levels of spatial pyramid) are integrated into a combined feature set, termed spatial pyramid face feature representation (SPFR). In addition, to perform recognition by matching between the pair of probe and gallery SPFR sets, we propose the use of a weighted sum of the dissimilarity scores computed at all spatial pyramid levels. For this purpose, we develop a novel weight determination solution based on class-wise discriminant power estimation for face feature at a specific pyramid level. We incorporate our proposed algorithm into general FR pipeline and achieve encouraging identification results on the CMU-PIE, FERET, and LFW datasets, compared to previously developed methods. In addition, the feasibility of our method has been successfully demonstrated by making comparisons with other state-of-the-art FR methods (including deep CNN based method) under the FERET and FRGC 2.0 evaluation protocols. Based on results, our method is advantageous in terms of high recognition accuracy and low complexity, as well as straightforward implementation.
机译:在本文中,我们提出了一种基于多分辨率空间金字塔的新颖人脸识别(FR)算法。在我们的方法中,将人脸细分为越来越精细的子区域(局部区域),并在直方图表示的多个级别上进行表示。为了解决图像未对准问题,也已经以有效的方式开发了基于重叠补丁的局部描述符提取。为了保留面部局部特征的多个细节级别并编码整体空间配置,将从级联直方图(来自空间金字塔的所有级别)获得的面部特征集成到称为空间金字塔的面部特征表示(SPFR)的组合特征集中。另外,为了通过在一对探针和画廊SPFR集之间进行匹配来执行识别,我们建议使用在所有空间金字塔级别计算的相异性分数的加权和。为此,我们针对特定金字塔等级的面部特征,基于分类判别能力估计,开发了一种新颖的权重确定解决方案。与先前开发的方法相比,我们将我们提出的算法整合到一般FR管道中,并在CMU-PIE,FERET和LFW数据集上获得令人鼓舞的识别结果。此外,通过与FERET和FRGC 2.0评估协议下的其他最新FR方法(包括基于深CNN的方法)进行比较,已成功证明了我们方法的可行性。基于结果,我们的方法在识别精度高,复杂度低以及实现简单方面具有优势。

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