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Learning Relational-Structural Networks for Robust Face Alignment

机译:学习关系结构网络以实现稳固的人脸对齐

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Unconstrained face alignment usually undergoes extreme deformations and severe occlusions, which likely gives rise to biased shape prediction. Most existing methods simply exploit shape structure by directly concatenating all landmarks, which leads to losses of facial details in extreme deformation regions. In this paper, we propose a relational-structural networks (RSN) approach to learn both local and global feature representation for robust face alignment. To achieve this goal, we built a structural branch network to disentangle the local geometric relationship among neighboring facial sub-regions. Moreover, we develop a reinforcement learning approach to reason the robust iterative process. Our RSN generates three candidate shapes. Then a Q-net evaluates three candidate shapes by a reward function, which select the best shape to re-initialize network input to alleviate the local optimization problem of cascade regression methods. Authentic experimental results indicate that our approach consistently outperforms the most state-of-the-art methods on widely evaluated challenging datasets.
机译:无约束的脸部对齐通常会经历极端的变形和严重的咬合,这很可能导致形状预测的偏差。大多数现有方法只是通过直接连接所有界标来简单地利用形状结构,这会导致极端变形区域中的面部细节丢失。在本文中,我们提出了一种关系结构网络(RSN)方法来学习局部和全局特征表示,以实现鲁棒的人脸对齐。为了实现此目标,我们建立了一个结构化分支网络,以解开相邻面部子区域之间的局部几何关系。此外,我们开发了一种强化学习方法来推理鲁棒的迭代过程。我们的RSN生成三个候选形状。然后,Q-net通过奖励函数评估三个候选形状,这些形状选择最佳形状以重新初始化网络输入,从而缓解级联回归方法的局部优化问题。真实的实验结果表明,在经过广泛评估的具有挑战性的数据集上,我们的方法始终优于最先进的方法。

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