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Cascade Multi-View Hourglass Model for Robust 3D Face Alignment

机译:级联多视图沙漏模型,可实现可靠的3D面部对齐

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Estimating the 3D facial landmarks from a 2D image remains a challenging problem. Even though state-of-the-art 2D alignment methods are able to predict accurate landmarks for semi-frontal faces, the majority of them fail to provide semantically consistent landmarks for profile faces. A de facto solution to this problem is through 3D face alignment that preserves correspondence across different poses. In this paper, we proposed a Cascade Multi-view Hourglass Model for 3D face alignment, where the first Hourglass model is explored to jointly predict semi-frontal and profile 2D facial landmarks, after removing spatial transformations, another Hourglass model is employed to estimate the 3D facial shapes. To improve the capacity without sacrificing the computational complexity, the original residual bottleneck block in the Hourglass model is replaced by a parallel, multi-scale inception-resnet block. Extensive experiments on two challenging 3D face alignment datasets, AFLW2000-3D and Menpo-3D, show the robustness of the proposed method under continuous pose changes.
机译:从2D图像估计3D面部界标仍然是一个难题。即使最先进的2D对齐方法能够预测半正面的准确地标,但大多数方法都无法为轮廓脸提供语义上一致的地标。解决这个问题的实际方法是通过3D人脸对齐,保留不同姿势之间的对应关系。在本文中,我们提出了用于3D面部对齐的Cascade多视图沙漏模型,其中探索了第一个沙漏模型以共同预测半正面和轮廓2D面部地标,在去除空间变换后,使用了另一个沙漏模型来估算3D面部形状。为了在不牺牲计算复杂度的情况下提高容量,将Hourglass模型中的原始残留瓶颈块替换为并行的多尺度起始-资源块。在两个具有挑战性的3D人脸对齐数据集AFLW2000-3D和Menpo-3D上进行的大量实验表明,该方法在连续姿势变化下具有鲁棒性。

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