Robotic grasp manipulation using evolutionary computing and deep reinforcement learning

被引:0
作者
Priya Shukla
Hitesh Kumar
G C Nandi
机构
[1] Indian Institute of Information Technology Allahabad,
[2] Indian Institute of Technology (Indian School of Mines),undefined
来源
Intelligent Service Robotics | 2021年 / 14卷
关键词
Grasp position mapping; Genetic algorithm; Orientation learning; Deep Q-network;
D O I
暂无
中图分类号
学科分类号
摘要
Intelligent object manipulation for grasping is a challenging problem for robots. Unlike robots, humans almost immediately know how to manipulate objects for grasping due to learning over the years. In this paper, we have developed learning-based pose estimation by decomposing the problem into both position and orientation learning. More specifically, for grasp position estimation, we explore three different methods such as genetic algorithm (GA)-based optimization method to minimize error between calculated image points and predicted end-effector (EE) position, a regression-based method (RM) where collected data points of robot EE and image points have been regressed with a linear model, a pseudoinverse (PI) model which has been formulated in the form of a mapping matrix with robot EE position and image points for several observations. Further for grasp orientation learning, we develop a deep reinforcement learning (DRL) model which we name as grasp deep Q-network (GDQN) and benchmarked our results with Modified VGG16 (MVGG16). Rigorous experimentation shows that due to inherent capability of producing very high-quality solutions for optimization problems and search problems, GA-based predictor performs much better than the other two models for position estimation. For orientation, learning results indicate that off policy learning through GDQN outperforms MVGG16, since GDQN architecture is specially made suitable for the reinforcement learning. Experimentation based on our proposed architectures and algorithms shows that the robot is capable of grasping nearly all rigid body objects having regular shapes.
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页码:61 / 77
页数:16
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