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Real-time facial feature detection using conditional regression forests

机译:使用条件回归森林进行实时面部特征检测

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Although facial feature detection from 2D images is a well-studied field, there is a lack of real-time methods that estimate feature points even on low quality images. Here we propose conditional regression forest for this task. While regression forest learn the relations between facial image patches and the location of feature points from the entire set of faces, conditional regression forest learn the relations conditional to global face properties. In our experiments, we use the head pose as a global property and demonstrate that conditional regression forests outperform regression forests for facial feature detection. We have evaluated the method on the challenging Labeled Faces in the Wild [20] database where close-to-human accuracy is achieved while processing images in real-time.
机译:尽管从2D图像中检测面部特征是一个经过充分研究的领域,但仍缺乏实时的方法来估计特征点,即使在低质量的图像上也是如此。在这里,我们为此任务提出了条件回归森林。回归森林从整个脸部集合中学习面部图像补丁与特征点位置之间的关系,而条件回归森林则学习有条件的与全局脸部属性的关系。在我们的实验中,我们将头部姿势用作全局属性,并证明了条件回归森林在面部特征检测方面优于回归森林。我们已经在Wild [20]数据库中具有挑战性的标签面孔上评估了该方法,该数据库在实时处理图像的同时可以实现接近人类的准确性。

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