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首页> 外文期刊>IEEE Transactions on Robotics >PoseRBPF: A Rao–Blackwellized Particle Filter for 6-D Object Pose Tracking
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PoseRBPF: A Rao–Blackwellized Particle Filter for 6-D Object Pose Tracking

机译:Poserbpf:6-D对象姿势跟踪的RAO-Blackwellized粒子过滤器

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摘要

Tracking 6-D poses of objects from videos provides rich information to a robot in performing different tasks such as manipulation and navigation. In this article, we formulate the 6-D object pose tracking problem in the Rao-Blackwellized particle filtering framework, where the 3-D rotation and the 3-D translation of an object are decoupled. This factorization allows our approach, called PoseRBPF, to efficiently estimate the 3-D translation of an object along with the full distribution over the 3-D rotation. This is achieved by discretizing the rotation space in a fine-grained manner and training an autoencoder network to construct a codebook of feature embeddings for the discretized rotations. As a result, PoseRBPF can track objects with arbitrary symmetries while still maintaining adequate posterior distributions. Our approach achieves state-of-the-art results on two 6-D pose estimation benchmarks. We open-source our implementation at https://github.com/NVlabs/PoseRBPF.
机译:跟踪视频的6-D姿势从视频中为机器人提供丰富的信息,以执行不同的任务,例如操纵和导航。 在本文中,我们在Rao-Blackwellized粒子过滤框架中制定了6-D对象姿势跟踪问题,其中三维旋转和对象的3-D翻译被解耦。 这种分解允许我们的方法称为poserbpf,以有效地估计对象的3-d翻译与三维旋转的完全分布。 这是通过以细粒化的方式离散地传递旋转空间来实现,并训练自动统计网络以构造用于离散化旋转的特征嵌入的码本。 结果,Poserbpf可以跟踪具有任意对称的对象,同时仍然保持足够的后分布。 我们的方法在两个6-D姿势估计基准上实现了最先进的结果。 我们在https://github.com/nvlabs/poserbpf下开源我们的实现。

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