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Context constrained facial landmark localization based on discontinuous Haar-like feature

机译:基于不连续Haar样特征的上下文约束面部界标定位

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Facial landmark localization is well known as one of the bottlenecks in face recognition. This paper proposes a novel facial landmark localization method, which introduces facial context constrains into cascaded AdaBoost framework. The motivation of our method lies in the basic human physiology observation that not only the local texture information but also the global context information is used together for human to realize the landmark location task. Therefore, in our solution, a novel type of Haar-like feature, called discontinuous Haar-like feature, is proposed to characterize the facial context, i.e. the cooccurrence relationship between target facial landmark and other local texture patterns within face region (including other landmarks, facial organs and also smoothing regions). For the locating task, traditional Haar-like features (characterizing local texture information) and discontinuous Haar-like features (characterizing context constrains in global sense) are combined together to form more powerful representations. Through Real AdaBoost learning, distinctive features are selected automatically and used for facial landmark detection. Our experiments on BioID and Cohn-Kanade databases have validated the proposed method by comparing with other state-of-the-art results.
机译:面部界标定位是众所周知的面部识别瓶颈之一。本文提出了一种新颖的人脸标志定位方法,该方法将人脸上下文约束引入了级联的AdaBoost框架中。我们的方法的动机在于基本的人类生理观察,即不仅将局部纹理信息而且将全局上下文信息一起用于人类以实现地标定位任务。因此,在我们的解决方案中,提出了一种新型的类似Haar的特征,称为不连续的Haar一样的特征,以表征面部上下文,即目标面部地标与面部区域内其他局部纹理图案(包括其他地标)之间的共现关系。 ,面部器官以及平滑区域)。对于定位任务,将传统的类似Haar的特征(表征局部纹理信息)和不连续的类似Haar的特征(表征全局意义上的上下文约束)组合在一起以形成更强大的表示。通过Real AdaBoost学习,可以自动选择独特的功能并将其用于面部标志检测。我们在BioID和Cohn-Kanade数据库上进行的实验通过与其他最新结果进行比较,验证了该方法的有效性。

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