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Weakly Supervised 3D Human Pose and Shape Reconstruction with Normalizing Flows

机译:弱监督3D人类姿势和标志性​​流动的形状重建

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Monocular 3D human pose and shape estimation is challenging due to the many degrees of freedom of the human body and the difficulty to acquire training data for large-scale supervised learning in complex visual scenes. In this paper we present practical semi-supervised and self-supervised models that support training and good generalization in real-world images and video. Our formulation is based on kinematic latent normalizing flow representations and dynamics, as well as differ-entiable, semantic body part alignment loss functions that support self-supervised learning. In extensive experiments using 3D motion capture datasets like CMU, Human3.6M, 3DPW, or AMASS, as well as image repositories like COCO, we show that the proposed methods outperform the state of the art, supporting the practical construction of an accurate family of models based on large-scale training with diverse and incompletely labeled image and video data.
机译:由于人体的自由度以及在复杂的视觉场景中难以获得大规模监督学习的困难,单眼3D人类姿势和形状估计是挑战。在本文中,我们目前实际的半监督和自我监督模型,支持现实世界图像和视频中的培训和良好的概括。我们的配方基于运动潜在规范化流量表示和动力学,以及支持自我监督学习的不同可赋予的语义体部分对齐函数。在广泛的实验中,使用3D运动捕获数据集如CMU,Human3.6M,3DPW或Amass,以及像Coco这样的图像存储库,我们表明该方法优于现有技术,支持精确的家庭的实际构造基于大规模培训的模型,具有多种和不完全标记的图像和视频数据。

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