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Stacked Hourglass Network for Robust Facial Landmark Localisation

机译:用于强大的面部地标本地化的堆积的沙漏网络

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With the increasing number of public available training data for face alignment, the regression-based methods attracted much attention and have become the dominant methods to solve this problem. There are two main factors, the variance of the regression target and the capacity of the regression model, affecting the performance of the regression task. In this paper, we present a Stacked Hourglass Network for robust facial landmark localisation. We first adopt a supervised face transformation to remove the translation, scale and rotation variation of each face, in order to reduce the variance of the regression target. Then we employ a deep convolutional neural network named Stacked Hourglass Network to increase the capacity of the regression model. To better evaluate the proposed method, we reimplement two popular cascade shape regression models, SDM and LBF, for comparison. Extensive experiments on four challenging datasets prove the effectiveness of the proposed method.
机译:随着越来越多的公共可用培训数据的面对对齐,基于回归的方法引起了很多关注,并已成为解决这个问题的主导方法。存在两个主要因素,回归目标的方差和回归模型的容量,影响回归任务的性能。在本文中,我们为强大的面部地标定位提供了一个堆积的沙漏网络。我们首先采用监督的面部转换来消除每个面部的翻译,尺度和旋转变化,以减少回归目标的方差。然后我们使用一个名为堆积的沙漏网络的深卷积神经网络来提高回归模型的容量。为了更好地评估所提出的方法,我们重新实现了两个流行的级联形状回归模型,SDM和LBF,以进行比较。四个具有挑战性的数据集的广泛实验证明了该方法的有效性。

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