首页> 外国专利> 3D HUMAN BODY POSE ESTIMATION USING A MODEL TRAINED FROM UNLABELED MULTI-VIEW DATA

3D HUMAN BODY POSE ESTIMATION USING A MODEL TRAINED FROM UNLABELED MULTI-VIEW DATA

机译:3D使用从未标记的多视图数据训练的模型姿势估计

摘要

Learning to estimate a 3D body pose, and likewise the pose of any type of object, from a single 2D image is of great interest for many practical graphics applications and generally relies on neural networks that have been trained with sample data which annotates (labels) each sample 2D image with a known 3D pose. Requiring this labeled training data however has various drawbacks, including for example that traditionally used training data sets lack diversity and therefore limit the extent to which neural networks are able to estimate 3D pose. Expanding these training data sets is also difficult since it requires manually provided annotations for 2D images, which is time consuming and prone to errors. The present disclosure overcomes these and other limitations of existing techniques by providing a model that is trained from unlabeled multi-view data for use in 3D pose estimation.
机译:学习估计3D身体姿势,同样地从单个2D图像中呈现任何类型的物体的姿势,对于许多实用的图形应用,并且通常依赖于通过注释(标签)的样本数据训练的神经网络 每个样本2D图像,具有已知的3D姿势。 然而,需要这种标记的训练数据具有各种缺点,包括例如传统上使用的训练数据集缺乏多样性,因此限制了神经网络能够估计3D姿势的程度。 扩展这些训练数据集也很困难,因为它需要手动为2D图像提供注释,这是耗时和容易出错的耗时。 本公开通过提供由用于3D姿态估计的未标记的多视图数据训练的模型来克服现有技术的这些和其他限制。

著录项

  • 公开/公告号US2021248772A1

    专利类型

  • 公开/公告日2021-08-12

    原文格式PDF

  • 申请/专利权人 NVIDIA CORPORATION;

    申请/专利号US202016897057

  • 发明设计人 UMAR IQBAL;PAVLO MOLCHANOV;JAN KAUTZ;

    申请日2020-06-09

  • 分类号G06T7/70;G06N20;G06N5/04;G06T7/50;

  • 国家 US

  • 入库时间 2022-08-24 20:33:54

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