Grasp Pose Detection Based on Shape Simplification

Chuqing Cao, Hanwei Liu
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Abstract

For robots in an unstructured work environment, grasping unknown objects that have neither model data nor RGB data is very important. The key to robotic autonomous grasping is not only in the judgment of object type but also in the shape of the object. We present a new grasping approach based on the basic compositions of objects. The simplification of complex objects is conducive to the description of object shape and provides effective ideas for the selection of grasping strategies. First, the depth camera is used to obtain partial 3D data of the target object. Then the 3D data are segmented and the segmented parts are simplified to a cylinder, a sphere, an ellipsoid, and a parallelepiped according to the geometric and semantic shape characteristics. The grasp pose is constrained according to the simplified shape feature and the core part of the object is used for grasping training using deep learning. The grasping model was evaluated in a simulation experiment and robot experiment, and the experiment result shows that learned grasp score using simplified constraints is more robust to gripper pose uncertainty than without simplified constraint.
基于形状简化的抓取姿态检测
对于处于非结构化工作环境中的机器人来说,抓取既没有模型数据也没有RGB数据的未知物体是非常重要的。机器人自主抓取的关键不仅在于物体类型的判断,还在于物体形状的判断。提出了一种基于物体基本组成的抓取方法。复杂物体的简化有利于物体形状的描述,为抓取策略的选择提供了有效的思路。首先,利用深度相机获取目标物体的部分三维数据;然后对三维数据进行分割,并根据几何形状和语义形状特征将分割的零件简化为圆柱体、球体、椭球体和平行六面体。根据简化的形状特征对抓取姿态进行约束,利用物体的核心部分进行深度学习抓取训练。通过仿真实验和机器人实验对该抓取模型进行了评估,实验结果表明,使用简化约束的抓取学习分数对抓取手姿态不确定性的鲁棒性优于不使用简化约束的抓取学习分数。
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