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LBP-based periocular recognition on challenging face datasets

机译:基于LBP的具有挑战性的人脸数据集的眼周识别

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This work develops a novel face-based matcher composed of a multi-resolution hierarchy of patch-based feature descriptors for periocular recognition - recognition based on the soft tissue surrounding the eye orbit. The novel patch-based framework for periocular recognition is compared against other feature descriptors and a commercial full-face recognition system against a set of four uniquely challenging face corpora. The framework, hierarchical three-patch local binary pattern, is compared against the three-patch local binary pattern and the uniform local binary pattern on the soft tissue area around the eye orbit. Each challenge set was chosen for its particular non-ideal face representations that may be summarized as matching against pose, illumination, expression, aging, and occlusions. The MORPH corpora consists of two mug shot datasets labeled Album 1 and Album 2. The Album 1 corpus is the more challenging of the two due to its incorporation of print photographs (legacy) captured with a variety of cameras from the late 1960s to 1990s. The second challenge dataset is the FRGC still image set. Corpus three, Georgia Tech face database, is a small corpus but one that contains faces under pose, illumination, expression, and eye region occlusions. The final challenge dataset chosen is the Notre Dame Twins database, which is comprised of 100 sets of identical twins and 1 set of triplets. The proposed framework reports top periocular performance against each dataset, as measured by rank-1 accuracy: (1) MORPH Album 1, 33.2%; (2) FRGC, 97.51%; (3) Georgia Tech, 92.4%; and (4) Notre Dame Twins, 98.03%. Furthermore, this work shows that the proposed periocular matcher (using only a small section of the face, about the eyes) compares favorably to a commercial full-face matcher.
机译:这项工作开发了一种新颖的基于面部的匹配器,该匹配器由用于眼周识别的基于补丁的特征描述符的多分辨率层次结构组成-基于眼眶周围的软组织进行识别。将新颖的基于补丁的眼周识别框架与其他特征描述符进行比较,并将商业全脸识别系统与一组四个具有独特挑战性的脸部语料库进行比较。将框架(分层的三补丁局部二进制模式)与眼眶周围软组织区域上的三补丁局部二进制模式和均匀局部二进制模式进行比较。每个挑战集都是针对其特定的非理想面部表示而选择的,可以总结为与姿势,照明,表情,衰老和遮挡相匹配。 MORPH语料库由两个标为专辑1和专辑2的面部照片数据集组成。专辑1语料库由于两者结合而更具挑战性,因为它结合了从1960年代末至1990年代末用各种相机拍摄的印刷照片(旧版)。第二个挑战数据集是FRGC静止图像集。第三语料库,佐治亚理工学院的人脸数据库,是一个很小的语料库,但是包含姿势,光照,表情和眼睛区域遮挡下的人脸。最终选择的挑战数据集是巴黎圣母院双胞胎数据库,该数据库由100组相同的双胞胎和1组三胞胎组成。拟议的框架报告了针对每个数据集的最高眼周表现,以等级1准确性衡量:(1)MORPH专辑1,占33.2%; (2)FRGC,占97.51%; (3)佐治亚理工学院,占92.4%; (4)巴黎圣母院,占98.03%。此外,这项工作表明,提出的眼周匹配器(仅使用一小部分面部,围绕眼睛)与商用全脸匹配器相比具有优势。

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