This paper concerns with the problem of deep learning parameters tuning using a genetic algorithm (GA) in order to improve the performance of deep learning (DL) method. We present a GA based DL method for robot object recognition and grasping. GA is used to optimize the DL parameters in learning procedure in term of the fitness function that is good enough. After finishing the evolution process, we receive the optimal number of DL parameters. To evaluate the performance of our method, we consider the object recognition and robot grasping tasks. Experimental results show that our method is efficient for robot object recognition and grasping
This paper describes the innovative use of genetic programming (GP) to solve the grasp synthesis pro...
Exploration using mobile robots is an active research area. In general, an optimal robot exploration...
In this paper, the structural genetic algorithm is used to optimize the neural network to control th...
This paper describes the innovative use of a genetic al-gorithm to solve the grasp synthesis problem...
Designing a simulated system and training it to optimize its tasks in simulated environment helps th...
For robots to attain more general-purpose utility, grasping is a necessary skill to master. Such gen...
Grasping is an essential prerequisite for an agent, either human or robotic, to manipulate various k...
This paper addresses the problem of automatic grasp synthesis of unknown planar objects. In other wo...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
We propose a method for learning specific object representations that can be applied (and reused) in...
A new learning algorithm for advanced robot locomotion is presented in this paper. This method invol...
Robotics faces many unique challenges as robotic platforms move out of the lab and into the real wor...
Artificial neural networks learned by evolutionary algorithms are commonly used to control the robot...
Learning agents can make use of Reinforcement Learning (RL) to decide their actions by using a rewar...
Agents can base decisions made using reinforcement learning (RL) on a reward function. The selection...
This paper describes the innovative use of genetic programming (GP) to solve the grasp synthesis pro...
Exploration using mobile robots is an active research area. In general, an optimal robot exploration...
In this paper, the structural genetic algorithm is used to optimize the neural network to control th...
This paper describes the innovative use of a genetic al-gorithm to solve the grasp synthesis problem...
Designing a simulated system and training it to optimize its tasks in simulated environment helps th...
For robots to attain more general-purpose utility, grasping is a necessary skill to master. Such gen...
Grasping is an essential prerequisite for an agent, either human or robotic, to manipulate various k...
This paper addresses the problem of automatic grasp synthesis of unknown planar objects. In other wo...
Deep Learning networks are a new type of neural network that discovers important object features. Th...
We propose a method for learning specific object representations that can be applied (and reused) in...
A new learning algorithm for advanced robot locomotion is presented in this paper. This method invol...
Robotics faces many unique challenges as robotic platforms move out of the lab and into the real wor...
Artificial neural networks learned by evolutionary algorithms are commonly used to control the robot...
Learning agents can make use of Reinforcement Learning (RL) to decide their actions by using a rewar...
Agents can base decisions made using reinforcement learning (RL) on a reward function. The selection...
This paper describes the innovative use of genetic programming (GP) to solve the grasp synthesis pro...
Exploration using mobile robots is an active research area. In general, an optimal robot exploration...
In this paper, the structural genetic algorithm is used to optimize the neural network to control th...