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Multi-view face detection using Normalized Pixel Difference feature

机译:使用归一化像素差异功能进行多视图面部检测

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摘要

The initial phase in an automatic facial analysis is face detection, which has been concentrated in the course of recent decades. It is very challenging to recognize a face from an image due to illumination, variations in pose, occlusion, scaling and facial expression. In our work, we propose a methodology to detect a face with arbitrary pose variations. First, a Normalized Pixel Difference (NPD) feature is calculated from the face image. Second, the optimal subset of NPD features and their combinations are refined via Deep Quadratic Tree (DQT). In order to learn the NPD feature based deep quadratic trees, Discrete Adaboost classifier is adopted. The experimental results on Labeled Faces in the Wild (LFW) face dataset demonstrate that our framework performs better than the previous methods in detecting multi-view faces.
机译:自动面部分析的初始阶段是面部检测,该方法已集中在最近几十年的过程中。由于照明,姿势,遮挡,缩放和面部表情的变化,从图像中识别人脸非常具有挑战性。在我们的工作中,我们提出了一种方法来检测具有任意姿势变化的面部。首先,从面部图像计算归一化像素差异(NPD)功能。其次,通过深度二次树(DQT)细化NPD特征的最佳子集及其组合。为了学习基于NPD特征的深二次树,采用了离散Adaboost分类器。在Wild(LFW)人脸标记的人脸数据集上的实验结果表明,我们的框架在检测多视图人脸方面比以前的方法表现更好。

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