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Robust face recognition from 2D and 3D images using structural Hausdorff distance

机译:使用结构性Hausdorff距离从2D和3D图像进行稳健的人脸识别

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摘要

This paper presents a recognition system that is invariant to both viewing directions and facial expressions. This system is based on both 3D range data as well as 2D grey-level facial images. An irregular 2D mesh labeled by 12 landmarks and a 3D region labeled by four landmarks are defined in each face for feature extraction. Nodes of the 2D mesh are described by Gabor filter responses and 3D points are represented by Point signatures. A subset of mesh nodes (feature nodes), from which discriminating and expression-invariant 2D features can be extracted, is automatically selected for each subject. In the face library, each subject is represented, using both 2D and 3D features, by a frontal face with a neutral facial expression. To classify test faces under varying views or varying facial expressions, a robust Structural Hausdorff Distance is proposed to handle the possible case of matching incomplete data under structural constraints. The best matched model is determined based on the linear integration of matching results in 2D and 3D domains. Good experimental results have been obtained based on our database (involving 80 persons with different facial expressions and viewpoints).
机译:本文提出了一种识别系统,该系统对于观看方向和面部表情均是不变的。该系统基于3D范围数据以及2D灰度面部图像。在每个面中定义了由12个地标标记的不规则2D网格和由四个地标标记的3D区域,用于特征提取。 2D网格的节点由Gabor滤波器响应描述,而3D点则由点签名表示。对于每个对象,都会自动选择一个网格节点(特征节点)的子集,从中可以提取出区分和不依赖表情的2D特征。在人脸库中,使用2D和3D功能,通过具有中性面部表情的正面来代表每个主题。为了对不同视角或不同面部表情下的测试面孔进行分类,提出了一种鲁棒的结构Hausdorff距离来处理在结构约束下匹配不完整数据的可能情况。最佳匹配模型是根据2D和3D域中匹配结果的线性积分确定的。根据我们的数据库,已经获得了良好的实验结果(涉及80位具有不同面部表情和观点的人)。

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