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Towards Highly Accurate and Stable Face Alignment for High-Resolution Videos

机译:用于高分辨率视频的高度准确和稳定的脸部对齐

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In recent years, heatmap regression based models have shown their effectiveness in face alignment and pose estimation. However, Conventional Heatmap Regression (CHR) is not accurate nor stable when dealing with high-resolution facial videos, since it finds the maximum activated location in heatmaps which are generated from rounding coordinates, and thus leads to quantization errors when scaling back to the original high-resolution space. In this paper, we propose a Fractional Heatmap Regression (FHR) for high-resolution video-based face alignment. The proposed FHR can accurately estimate the fractional part according to the 2D Gaussian function by sampling three points in heatmaps. To further stabilize the landmarks among continuous video frames while maintaining the precise at the same time, we propose a novel stabilization loss that contains two terms to address time delay and non-smooth issues, respectively. Experiments on 300W, 300-VW and Talking Face datasets clearly demonstrate that the proposed method is more accurate and stable than the state-of-the-art models.
机译:近年来,基于Heatmap回归的模型表明了它们对面部对准和姿态估计的有效性。然而,在处理高分辨率面部视频时,传统的热爱回归(CHR)不准确,也不是稳定的,因为它发现了从舍入坐标生成的热量中的最大激活位置,因此在缩放回原始时导致量化误差高分辨率空间。在本文中,我们提出了一种用于高分辨率视频的面向对准的分数热爱回归(FHR)。所提出的FHR可以通过在热手中采样三个点来准确地估计2D高斯函数的分数部分。为了进一步稳定连续视频帧之间的标志性,同时保持精确的同时,我们提出了一种新的稳定损失,其中包含两个术语来解决时间延迟和非平滑问题。 300W,300VW和谈话脸部数据集的实验清楚地表明该方法比最先进的模型更准确且稳定。

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