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Deep Alignment Network: A convolutional neural network for robust face alignment

机译:深度对齐网络:卷积神经网络,用于强大的脸部对齐

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In this paper, we propose Deep Alignment Network (DAN), a robust face alignment method based on a deep neural network architecture. DAN consists of multiple stages, where each stage improves the locations of the facial landmarks estimated by the previous stage. Our method uses entire face images at all stages, contrary to the recently proposed face alignment methods that rely on local patches. This is possible thanks to the use of landmark heatmaps which provide visual information about landmark locations estimated at the previous stages of the algorithm. The use of entire face images rather than patches allows DAN to handle face images with large variation in head pose and difficult initializations. An extensive evaluation on two publicly available datasets shows that DAN reduces the state-of-the-art failure rate by up to 70%. Our method has also been submitted for evaluation as part of the Menpo challenge.
机译:本文提出了一种基于深神经网络架构的深度对准网络(DAN),这是一种鲁棒面对准方法。丹包括多个阶段,其中每个阶段都改善了前阶段估计的面部地标的位置。我们的方法在所有阶段使用整个脸部图像,与最近提出的面向对准方法相反,依赖于本地补丁。由于使用地标热,这提供了有关在算法的先前阶段估计的地标位置的视觉信息,这是可能的。使用整个面部图像而不是补丁允许DAN处理头部姿势和困难初始化中具有大变化的面部图像。对两个公共数据集的广泛评估显示,DAN将最先进的故障率降低至70%。我们的方法也已提交作为MENPO挑战的一部分的评估。

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