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Domain Transfer for 3D Pose Estimation from Color Images Without Manual Annotations

机译:无需人工注释即可从彩色图像进行3D姿势估计的域传输

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We introduce a novel learning method for 3D pose estimation from color images. While acquiring annotations for color images is a difficult task, our approach circumvents this problem by learning a mapping from paired color and depth images captured with an RGB-D camera. We jointly learn the pose from synthetic depth images that are easy to generate, and learn to align these synthetic depth images with the real depth images. We show our approach for the task of 3D hand pose estimation and 3D object pose estimation, both from color images only. Our method achieves performances comparable to state-of-the-art methods on popular benchmark datasets, without requiring any annotations for the color images.
机译:我们介绍了一种用于从彩色图像进行3D姿势估计的新颖学习方法。虽然获取彩色图像的注释是一项艰巨的任务,但我们的方法通过从RGB-D相机捕获的成对的彩色和深度图像中学习映射来规避此问题。我们从易于生成的合成深度图像中共同学习姿势,并学习将这些合成深度图像与实际深度图像对齐。我们展示了仅用于彩色图像的3D手姿势估计和3D对象姿势估计任务的方法。我们的方法可实现与流行基准数据集上的最新方法相当的性能,而无需对彩色图像进行任何注释。

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