Adaptive Fuzzy Gaussian Mixture Models for Shape Approximation in Robot Grasping

被引:0
|
作者
Huifeng Lin
Tong Zhang
Zhaopeng Chen
Haina Song
Chenguang Yang
机构
[1] South China University of Technology,Key Laboratory of Autonomous Systems and Networked Control, College of Automation Science and Engineering
[2] South China University of Technology,School of Electronics and Information
[3] German Aerospace Center,Robotics and Mechatronics Center
[4] DLR,Bristol Robotics Laboratory
[5] Haihua Electronics Enterprise (China) Co. Ltd,undefined
[6] University of the West of England,undefined
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关键词
Grasp planning; Novel object grasping; Fuzzy Gaussian mixture models; Shape approximation;
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摘要
Robotic grasping has always been a challenging task for both service and industrial robots. The ability of grasp planning for novel objects is necessary for a robot to autonomously perform grasps under unknown environments. In this work, we consider the task of grasp planning for a parallel gripper to grasp a novel object, given an RGB image and its corresponding depth image taken from a single view. In this paper, we show that this problem can be simplified by modeling a novel object as a set of simple shape primitives, such as ellipses. We adopt fuzzy Gaussian mixture models (GMMs) for novel objects’ shape approximation. With the obtained GMM, we decompose the object into several ellipses, while each ellipse is corresponding to a grasping rectangle. After comparing the grasp quality among these rectangles, we will obtain the most proper part for a gripper to grasp. Extensive experiments on a real robotic platform demonstrate that our algorithm assists the robot to grasp a variety of novel objects with good grasp quality and computational efficiency.
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页码:1026 / 1037
页数:11
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