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首页> 外文期刊>Pattern Analysis and Machine Intelligence, IEEE Transactions on >Multi-Directional Multi-Level Dual-Cross Patterns for Robust Face Recognition
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Multi-Directional Multi-Level Dual-Cross Patterns for Robust Face Recognition

机译:多方向多级双交叉模式,用于人脸识别

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摘要

To perform unconstrained face recognition robust to variations in illumination, pose and expression, this paper presents a new scheme to extract “Multi-Directional Multi-Level Dual-Cross Patterns” (MDML-DCPs) from face images. Specifically, the MDML-DCPs scheme exploits the first derivative of Gaussian operator to reduce the impact of differences in illumination and then computes the DCP feature at both the holistic and component levels. DCP is a novel face image descriptor inspired by the unique textural structure of human faces. It is computationally efficient and only doubles the cost of computing local binary patterns, yet is extremely robust to pose and expression variations. MDML-DCPs comprehensively yet efficiently encodes the invariant characteristics of a face image from multiple levels into patterns that are highly discriminative of inter-personal differences but robust to intra-personal variations. Experimental results on the FERET, CAS-PERL-R1, FRGC 2.0, and LFW databases indicate that DCP outperforms the state-of-the-art local descriptors (e.g., LBP, LTP, LPQ, POEM, tLBP, and LGXP) for both face identification and face verification tasks. More impressively, the best performance is achieved on the challenging LFW and FRGC 2.0 databases by deploying MDML-DCPs in a simple recognition scheme.
机译:为了执行对照明,姿势和表情变化具有鲁棒性的不受约束的面部识别,本文提出了一种从面部图像中提取“多方向多级双交叉模式”(MDML-DCP)的新方案。具体来说,MDML-DCPs方案利用高斯算子的一​​阶导数来减少照明差异的影响,然后在整体和组件级别上计算DCP特征。 DCP是一种新颖的人脸图像描述符,其灵感来自人脸独特的纹理结构。它具有高效的计算能力,并且仅使计算本地二进制模式的成本增加了一倍,但对姿势和表达式的变化却非常健壮。 MDML-DCP全面而有效地将面部图像的不变特征从多个级别编码为可高度区分人际差异但对人际差异具有鲁棒性的模式。在FERET,CAS-PERL-R1,FRGC 2.0和LFW数据库上的实验结果表明,DCP均优于最新的本地描述符(例如LBP,LTP,LPQ,POEM,tLBP和LGXP)人脸识别和人脸验证任务。更令人印象深刻的是,通过以简单的识别方案部署MDML-DCP,可以在具有挑战性的LFW和FRGC 2.0数据库上实现最佳性能。

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