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Gabor feature constrained statistical model for efficient landmark localization and face recognition

机译:Gabor特征约束统计模型可有效实现地标定位和人脸识别

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摘要

Feature extraction and classification using Gabor wavelets have proven to be successful in computer vision and pattern recognition. Gabor feature-based Elastic Bunch Graph Matching (EBGM), which demonstrated excellent performance in the FERET evaluation test, has been considered as one of the best algorithms for face recognition due to its robustness against expression, illumination and pose variations. However, EBGM involves considerable computational complexity in its rigid and deformable matching process, preventing its use in many real-time applications. This paper presents a new Constrained Profile Model (CPM), in cooperation with Flexible Shape Model (FSM) to form an efficient localization framework. Through Gabor feature constrained local alignment, the proposed method not only avoids local minima in landmark localization, but also circumvents the exhaustive global optimization. Experiments on CAS-PEAL and FERET databases demonstrated the effectiveness and efficiency of the proposed method.
机译:事实证明,使用Gabor小波进行特征提取和分类在计算机视觉和模式识别中是成功的。基于Gabor特征的弹性束图匹配(EBGM)在FERET评估测试中表现出出色的性能,由于其对表情,光照和姿势变化的鲁棒性,被认为是面部识别的最佳算法之一。但是,EBGM在其刚性和可变形的匹配过程中涉及相当大的计算复杂性,从而使其无法在许多实时应用中使用。本文提出了一种新的约束轮廓模型(CPM),与柔性形状模型(FSM)协作以形成有效的本地化框架。通过Gabor特征约束局部对准,该方法不仅避免了地标定位中的局部极小值,而且避免了详尽的全局优化。在CAS-PEAL和FERET数据库上进行的实验证明了该方法的有效性和效率。

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