In this study, we develop a framework for an intelligent and self-supervised industrial pick-and-place operation for cluttered environments. Our target is to have the agent learn to perform prehensile and non-prehensile robotic manipulations to improve the efficiency and throughput of the pick-and-place task. To achieve this target, we specify the problem as a Markov decision process (MDP) and deploy a deep reinforcement learning (RL) temporal difference model-free algorithm known as the deep Q-network (DQN). We consider three actions in our MDP; one is ‘grasping’ from the prehensile manipulation category and the other two are ‘left-slide’ and ‘right-slide’ from the non-prehensile manipulation category. Our DQN is composed of three fully co...
This thesis presents a series of planners and learning algorithms for real-world manipulation in clu...
Robots often face situations where grasping a goal object is desirable but not feasible due to other...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
Grasping objects is a critical but challenging aspect of robotic manipulation. Recent studies have c...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
Robotic manipulation refers to how robots intelligently interact with the objects in their surroundi...
Industrial robot manipulators are widely used for repetitive applications that require high precisi...
This paper presents a robotic grasp-to-place system that has the capability of grasping objects in ...
We present a fully autonomous robotic system for grasping objects in dense clutter. The objects are ...
The application of deep reinforcement learning (DRL) has become prevalent in many fields and has pr...
Extracting a known target object from a pile of other objects in a cluttered environment is a challe...
"Grasping is a fundamental element of robotics which has seen great advances in hardware and enginee...
The number of applications in which industrial robots share their working environment with people is...
The number of applications in which industrial robots share their working environment with people is...
Robots often face situations where grasping a goal object is desirable but not feasible due to other...
This thesis presents a series of planners and learning algorithms for real-world manipulation in clu...
Robots often face situations where grasping a goal object is desirable but not feasible due to other...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
Grasping objects is a critical but challenging aspect of robotic manipulation. Recent studies have c...
Industrial robot manipulators are widely used for repetitive applications that require high precisio...
Robotic manipulation refers to how robots intelligently interact with the objects in their surroundi...
Industrial robot manipulators are widely used for repetitive applications that require high precisi...
This paper presents a robotic grasp-to-place system that has the capability of grasping objects in ...
We present a fully autonomous robotic system for grasping objects in dense clutter. The objects are ...
The application of deep reinforcement learning (DRL) has become prevalent in many fields and has pr...
Extracting a known target object from a pile of other objects in a cluttered environment is a challe...
"Grasping is a fundamental element of robotics which has seen great advances in hardware and enginee...
The number of applications in which industrial robots share their working environment with people is...
The number of applications in which industrial robots share their working environment with people is...
Robots often face situations where grasping a goal object is desirable but not feasible due to other...
This thesis presents a series of planners and learning algorithms for real-world manipulation in clu...
Robots often face situations where grasping a goal object is desirable but not feasible due to other...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...