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Robust Face Alignment Based on Hierarchical Classifier Network

机译:基于分层分类器网络的鲁棒人脸对齐

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摘要

Robust face alignment is crucial for many face processing applications. As face detection only gives a rough estimation of face region, one important problem is how to align facial shapes starting from this rough estimation, especially on face images with expression and pose changes. We propose a novel method of face alignment by building a hierarchical classifier network, connecting face detection and face alignment into a smooth coarse-to-fine procedure. Classifiers are trained to recognize feature textures in different scales from entire face to local patterns. A multi-layer structure is employed to organize the classifiers, which begins with one classifier at the first layer and gradually refines the localization of feature points by more classifiers in the following layers. A Bayesian framework is configured for the inference of the feature points between the layers. The boosted classifiers detects facial features discriminately from its local neighborhood, while the inference between the layers constrains the searching space. Extensive experiments are reported to show its accuracy and robustness.
机译:稳固的面部对齐对于许多面部处理应用至关重要。由于面部检测仅给出面部区域的粗略估计,所以一个重要的问题是如何从该粗略估计开始对准面部形状,尤其是在表情和姿势变化的面部图像上。我们提出了一种新的人脸对齐方法,方法是建立一个分层的分类器网络,将人脸检测和人脸对齐连接到平滑的粗到精过程中。训练分类器以识别从整个脸部到局部图案的不同比例的特征纹理。采用多层结构来组织分类器,该分类器从第一层的一个分类器开始,并在随后的层中通过更多的分类器逐渐完善特征点的定位。贝叶斯框架被配置用于推断层之间的特征点。增强的分类器从其局部邻域中区分出面部特征,而各层之间的推断则限制了搜索空间。据报道,大量实验证明了其准确性和鲁棒性。

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