CDPN: Coordinates-Based Disentangled Pose Network for Real-Time RGB-Based 6-DoF Object Pose Estimation

Zhigang Li, Gu Wang, Xiangyang Ji
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引用次数: 279

Abstract

6-DoF object pose estimation from a single RGB image is a fundamental and long-standing problem in computer vision. Current leading approaches solve it by training deep networks to either regress both rotation and translation from image directly or to construct 2D-3D correspondences and further solve them via PnP indirectly. We argue that rotation and translation should be treated differently for their significant difference. In this work, we propose a novel 6-DoF pose estimation approach: Coordinates-based Disentangled Pose Network (CDPN), which disentangles the pose to predict rotation and translation separately to achieve highly accurate and robust pose estimation. Our method is flexible, efficient, highly accurate and can deal with texture-less and occluded objects. Extensive experiments on LINEMOD and Occlusion datasets are conducted and demonstrate the superiority of our approach. Concretely, our approach significantly exceeds the state-of-the- art RGB-based methods on commonly used metrics.
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CDPN:基于坐标的解纠缠姿态网络,用于实时基于rgb的六自由度目标姿态估计
从单个RGB图像中估计六自由度目标姿态是计算机视觉中一个基本且长期存在的问题。目前的主要方法是通过训练深度网络来直接从图像中回归旋转和平移,或者构建2D-3D对应关系,并通过PnP间接地进一步解决它们。我们认为,旋转和平移应区别对待,因为它们的显著差异。在这项工作中,我们提出了一种新的六自由度姿态估计方法:基于坐标的解纠缠姿态网络(CDPN),该方法将姿态解纠缠分别预测旋转和平移,以实现高精度和鲁棒的姿态估计。该方法灵活、高效、精度高,可以处理无纹理和遮挡的物体。在LINEMOD和Occlusion数据集上进行了大量的实验,证明了我们方法的优越性。具体地说,我们的方法在常用的度量标准上明显超过了基于rgb的最先进的方法。
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