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Leveraging Intra and Inter-Dataset Variations for Robust Face Alignment

机译:利用内部和数据集间的差异实现稳固的面部对齐

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Face alignment is a critical topic in the computer vision community. Numerous efforts have been made and various benchmark datasets have been released in recent decades. However, two significant issues remain in recent datasets, e.g., Intra-Dataset Variation and Inter-Dataset Variation. Inter-Dataset Variation refers to bias on expression, head pose, etc. inside one certain dataset, while Intra-Dataset Variation refers to different bias across different datasets. In this study, we show that model robustness can be significantly improved by leveraging rich variations within and between different datasets. This is non-trivial because of inconsistent landmark definitions between different datasets and the serious data bias within one certain dataset. To address the mentioned problems, we proposed a novel Deep Variation Leveraging Network (DVLN), which consists of two strong coupling sub-networks, e.g., Dataset-Across Network (DA-Net) and Candidate-Decision Network (CD-Net). In particular, DA-Net takes advantage of different characteristics and distributions across different datasets, while CD-Net makes a final decision on candidate hypotheses given by DA-Net to leverage variations within one certain dataset. Extensive evaluations show that our approach demonstrates real-time performance and dramatically outperforms state-of-the-art methods on the challenging 300-W dataset.
机译:面部对齐是计算机视觉社区中的一个关键主题。最近几十年来,已经做出了许多努力,并且发布了各种基准数据集。但是,最近的数据集中仍然存在两个重要问题,例如,数据集内变化和数据集间变化。数据集间差异是指一个特定数据集中的表情,头部姿势等的偏差,而数据集内差异是指不同数据集之间的差异。在这项研究中,我们表明,通过利用不同数据集内部和之间的丰富变化,可以显着提高模型的鲁棒性。这是不平凡的,因为不同数据集之间的界标定义不一致,并且一个特定数据集中的严重数据偏差。为了解决上述问题,我们提出了一种新颖的深度变化杠杆网络(DVLN),该网络由两个强大的耦合子网组成,例如跨数据集网络(DA-Net)和候选决策网络(CD-Net)。特别是,DA-Net利用了不同数据集中的不同特征和分布,而CD-Net对DA-Net给出的候选假设做出了最终决定,以利用一个特定数据集中的变化。广泛的评估表明,我们的方法演示了实时性能,并且在具有挑战性的300W数据集上大大优于最新方法。

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