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Cross View Fusion for 3D Human Pose Estimation

机译:用于3D人体姿势估计的Cross View Fusion

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We present an approach to recover absolute 3D human poses from multi-view images by incorporating multi-view geometric priors in our model. It consists of two separate steps: (1) estimating the 2D poses in multi-view images and (2) recovering the 3D poses from the multi-view 2D poses. First, we introduce a cross-view fusion scheme into CNN to jointly estimate 2D poses for multiple views. Consequently, the 2D pose estimation for each view already benefits from other views. Second, we present a recursive Pictorial Structure Model to recover the 3D pose from the multi-view 2D poses. It gradually improves the accuracy of 3D pose with affordable computational cost. We test our method on two public datasets H36M and Total Capture. The Mean Per Joint Position Errors on the two datasets are 26mm and 29mm, which outperforms the state-of-the-arts remarkably (26mm vs 52mm, 29mm vs 35mm).
机译:我们提出了一种通过在模型中合并多视图几何先验来从多视图图像中恢复绝对3D人体姿势的方法。它包括两个单独的步骤:(1)估计多视图图像中的2D姿势,以及(2)从多视图2D姿势中恢复3D姿势。首先,我们将交叉视图融合方案引入到CNN中,以共同估算多个视图的2D姿势。因此,每个视图的2D姿态估计已从其他视图中受益。其次,我们提出一个递归的图片结构模型,以从多视图2D姿势中恢复3D姿势。它以可承受的计算成本逐步提高了3D姿势的准确性。我们在两个公共数据集H36M和Total Capture上测试了我们的方法。两个数据集上的平均每关节位置误差分别为26mm和29mm,明显优于最新技术水平(26mm vs 52mm,29mm vs 35mm)。

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