基于神经特征粗到精绘制的鲁棒类别级6D姿态估计

Wufei Ma, Angtian Wang, A. Yuille, Adam Kortylewski
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引用次数: 9

摘要

我们考虑了从单个RGB图像中估计类别级6D姿态的问题。我们的方法将一个对象类别表示为一个长方体网格,并学习每个网格顶点的神经特征激活的生成模型,通过可微渲染来执行姿态估计。基于渲染的方法的一个常见问题是,它们依赖于边界框建议,这些建议不能传达物体的3D旋转信息,并且在物体部分遮挡时不可靠。相反,我们引入了一种从粗到精的优化策略,该策略利用渲染过程来估计6D对象建议的稀疏集,随后使用基于梯度的优化对其进行细化。使我们的方法收敛的关键是使用对比学习训练成尺度和旋转不变的神经特征表示。与之前的工作相比,我们的实验证明了增强的类别级6D姿态估计性能,特别是在强部分遮挡下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust Category-Level 6D Pose Estimation with Coarse-to-Fine Rendering of Neural Features
We consider the problem of category-level 6D pose estimation from a single RGB image. Our approach represents an object category as a cuboid mesh and learns a generative model of the neural feature activations at each mesh vertex to perform pose estimation through differentiable rendering. A common problem of rendering-based approaches is that they rely on bounding box proposals, which do not convey information about the 3D rotation of the object and are not reliable when objects are partially occluded. Instead, we introduce a coarse-to-fine optimization strategy that utilizes the rendering process to estimate a sparse set of 6D object proposals, which are subsequently refined with gradient-based optimization. The key to enabling the convergence of our approach is a neural feature representation that is trained to be scale- and rotation-invariant using contrastive learning. Our experiments demonstrate an enhanced category-level 6D pose estimation performance compared to prior work, particularly under strong partial occlusion.
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