无姿态标签RGB图像对称方向估计的隐式概率分布函数学习

Arul Selvam Periyasamy, Luis Denninger, Sven Behnke
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摘要

物体姿态估计是机器人自主操作的必要前提,但对称性的存在增加了姿态估计任务的复杂性。现有的物体姿态估计方法输出一个单一的6D姿态。因此,他们缺乏对对称性进行推理的能力。最近,用神经网络将对象定向建模为SO v3:流形上的非参数概率分布已经显示出令人印象深刻的结果。然而,获取大规模数据集来训练姿态估计模型仍然是一个瓶颈。为了解决这一限制,我们引入了一种自动姿态标记方案。在没有物体姿态标注和三维物体模型的RGB-D图像中,我们设计了一个由点云配准和渲染比较验证组成的两阶段流水线,为每张图像生成多个对称的伪地真姿态标签。使用生成的姿态标签,我们训练了一个ImplicitPDF模型来估计给定RGB图像的方向假设的可能性。一个有效的分层采样的SO v3:歧管使可处理的生成完整的对称集在多个分辨率。在推理过程中,利用梯度上升估计目标物体最可能的方向。我们在一个逼真数据集和T-Less数据集上对所提出的自动姿态标记方案和ImplicitPDF模型进行了评估,证明了所提出方法的优点。
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Learning Implicit Probability Distribution Functions for Symmetric Orientation Estimation from RGB Images Without Pose Labels
Object pose estimation is a necessary prerequisite for autonomous robotic manipulation, but the presence of symmetry increases the complexity of the pose estimation task. Existing methods for object pose estimation output a single 6D pose. Thus, they lack the ability to reason about symmetries. Lately, modeling object orientation as a non-parametric probability distribution on the SO❨3❩ manifold by neural networks has shown impressive results. However, acquiring large-scale datasets to train pose estimation models remains a bottleneck. To address this limitation, we introduce an automatic pose labeling scheme. Given RGB-D images without object pose annotations and 3D object models, we design a two-stage pipeline consisting of point cloud registration and render-and-compare validation to generate multiple symmetrical pseudo-ground-truth pose labels for each image. Using the generated pose labels, we train an ImplicitPDF model to estimate the likelihood of an orientation hypothesis given an RGB image. An efficient hierarchical sampling of the SO❨3❩ manifold enables tractable generation of the complete set of symmetries at multiple resolutions. During inference, the most likely orientation of the target object is estimated using gradient ascent. We evaluate the proposed automatic pose labeling scheme and the ImplicitPDF model on a photorealistic dataset and the T-Less dataset, demonstrating the advantages of the proposed method.
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