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Lifting 2d Human Pose to 3d : A Weakly Supervised Approach

机译:提升2D人类姿势到3D:一种弱监督的方法

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Estimating 3d human pose from monocular images is a challenging problem due to the variety and complexity of human poses and the inherent ambiguity in recovering depth from the single view. Recent deep learning based methods show promising results by using supervised learning on 3d pose annotated datasets. However, the lack of large-scale 3d annotated training data captured under in-the-wild settings makes the 3d pose estimation difficult for in-the-wild poses. Few approaches have utilized training images from both 3d and 2d pose datasets in a weakly-supervised manner for learning 3d poses in unconstrained settings. In this paper, we propose a method which can effectively predict 3d human pose from 2d pose using a deep neural network trained in a weakly-supervised manner on a combination of ground-truth 3d pose and ground-truth 2d pose. Our method uses re-projection error minimization as a constraint to predict the 3d locations of body joints, and this is crucial for training on data where the 3d ground-truth is not present. Since minimizing re-projection error alone may not guarantee an accurate 3d pose, we also use additional geometric constraints on skeleton pose to regularize the pose in 3d. We demonstrate the superior generalization ability of our method by cross-dataset validation on a challenging 3d benchmark dataset MPI-INF-3DHP containing in the wild 3d poses.
机译:估计单眼图像的3D人类姿势是由于人类姿势的种类和复杂性以及从单个视图中恢复深度的固有模糊性的挑战性问题。最近的基于深度学习的方法显示了通过在3D姿势注释数据集上使用监督学习的有希望的结果。但是,在野外设置下捕获的缺乏大规模的3D注释训练数据使得在野外姿势的3D姿势估计变得困难。很少有方法利用来自3D和2D姿势数据集的训练图像,以弱监督的方式用于在不受约束的设置中学习3D构成。在本文中,我们提出了一种方法,该方法可以在地面真理3D姿势和地面真相2D姿势的组合中使用深度神经网络从2D姿势中预测2D姿势的3D人姿势。我们的方法使用重新投影误差最小化作为预测身体关节的3D位置的约束,这对于对3D地面真理不存在的数据训练至关重要。由于单独最小化重新投影错误可能无法保证准确的3D姿势,因此我们还在骨架姿势上使用额外的几何约束来规范3D姿势。我们展示了我们在疯狂的3D基准数据集MPI-INF-3DHP上的跨数据集验证来展示我们方法的卓越泛化能力。

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