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Occlusion-aware multi-view reconstruction of articulated objects for manipulation

机译:咬合多关节物体的多视图重建以进行操作

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摘要

We present an algorithm called Procrustes-Lo-RANSAC (PLR) to recover complete 3D models of articulated objects. Structure-from-motion techniques are used to capture 3D point cloud models of an object in two different configurations. Procrustes analysis, combined with a locally optimized RANSAC sampling strategy, facilitates a straightforward geometric approach to recovering the joint axes, as well as classifying them automatically as either revolute or prismatic. With the resulting articulated model, a robotic system is then able to manipulate the object along its joint axes at a specified grasp point in order to exercise its degrees of freedom. Because the models capture all sides of the object, they are occlusion-aware, meaning that the robot has knowledge of parts of the object that are not visible in the current view. Our algorithm does not require prior knowledge of the object, nor does it make any assumptions about the planarity of the object or scene. Experiments with a PUMA 500 robotic arm demonstrate the effectiveness of the approach on a variety of real-world objects containing both revolute and prismatic joints.
机译:我们提出一种称为Procrustes-Lo-RANSAC(PLR)的算法,以恢复关节物体的完整3D模型。运动结构技术用于捕获两种不同配置的对象的3D点云模型。前驱力分析与局部优化的RANSAC采样策略相结合,有助于采用简单的几何方法来恢复关节轴,并将其自动分类为旋转轴或棱柱形。利用所产生的铰接模型,机器人系统能够在指定的抓握点沿其关节轴操纵对象,以行使其自由度。由于模型捕获对象的所有侧面,因此它们可以识别遮挡,这意味着机器人可以了解对象的某些部分,这些部分在当前视图中不可见。我们的算法不需要对象的先验知识,也不需要对对象或场景的平面性做出任何假设。用PUMA 500机械臂进行的实验证明了该方法对包含旋转关节和棱柱关节的各种现实对象的有效性。

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