首页> 外文会议>IEEE/RSJ International Conference on Intelligent Robots and Systems;IROS 2012 >Robust descriptors for 3D point clouds using Geometric and Photometric Local Feature
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Robust descriptors for 3D point clouds using Geometric and Photometric Local Feature

机译:使用几何和光度局部特征的3D点云鲁棒描述符

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摘要

The robust perception of robots is strongly needed to handle various objects skillfully. In this paper, we propose a novel approach to recognize objects and estimate their 6-DOF pose using 3D feature descriptors, called Geometric and Photometric Local Feature (GPLF). The proposed descriptors use both the geometric and photometric information of 3D point clouds from RGB-D camera and integrate those information into efficient descriptors. GPLF shows robust discriminative performance regardless of characteristics such as shapes or appearances of objects in cluttered scenes. The experimental results show how well the proposed approach classifies and identify objects. The performance of pose estimation is robust and stable enough for the robot to manipulate objects. We also compare the proposed approach with previous approaches that use partial information of objects with a representative large-scale RGB-D object dataset.
机译:为了熟练地处理各种物体,强烈需要对机器人有深刻的了解。在本文中,我们提出了一种新颖的方法来识别对象并使用称为几何和光度局部特征(GPLF)的3D特征描述符估计其6自由度姿势。拟议的描述符同时使用来自RGB-D相机的3D点云的几何和光度信息,并将这些信息集成到有效的描述符中。无论在杂乱场景中物体的形状或外观等特征如何,GPLF都能表现出强大的判别性能。实验结果表明,该方法能够很好地对物体进行分类和识别。姿势估计的性能足够强大且稳定,足以使机器人操作对象。我们还将提出的方法与以前的方法进行比较,以前的方法使用具有代表性的大规模RGB-D对象数据集的对象的部分信息。

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