In the process of human learning, the brain which acts as a controller receive sensory signals from other parts of the body and undergo processing to generate information which will then be stored. Based on previous compilation of information present, the brain will map similar experiences and trigger responses causing the person to react accordingly to the situation. Using similar principle, the neural network controller processes past results to produce desired responses via its learning function. Being a dynamic close loop system, the learning controller enables the robot to adapt to unknown situations by regulating its output based on the error present. In the field of region tracking, this concept can be observable as the tool of the r...
A neural map algorithm has been employed to control a five-joint pneu-matic robot arm and gripper th...
In the process of Human-robot skill transfer, we require the robot to reproduce the trajectory of te...
International audienceThis paper presents an original method in the use of neural networks and backp...
This article examines state-of-the-art learning control schemes, particularly in applications for ro...
As an imitation of the biological nervous systems, neural networks (NNs), which have been characteri...
In this paper, a hierarchical neurocontroller for manipulation of a robotic arm is presented. Specif...
International audienceA neural network model for a sensorimotor system, which was developed to simul...
Abstruct-lmpedance control is one of the most effective control methods for the manipulators in cont...
Neural networks are developed for controlling a robot-arm and camera system and for processing image...
This book presents and investigates different methods and schemes for the control of robotic arms wh...
Whenever we perform a movement and interact with objects in our environment, our central nervous sys...
grantor: University of TorontoThis thesis summarizes an investigation of the application o...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
This paper reports on a continuing research effort to evolve robot controllers with neural networks ...
From infants to adults, each individual undergoes changes both physically and mentally through inter...
A neural map algorithm has been employed to control a five-joint pneu-matic robot arm and gripper th...
In the process of Human-robot skill transfer, we require the robot to reproduce the trajectory of te...
International audienceThis paper presents an original method in the use of neural networks and backp...
This article examines state-of-the-art learning control schemes, particularly in applications for ro...
As an imitation of the biological nervous systems, neural networks (NNs), which have been characteri...
In this paper, a hierarchical neurocontroller for manipulation of a robotic arm is presented. Specif...
International audienceA neural network model for a sensorimotor system, which was developed to simul...
Abstruct-lmpedance control is one of the most effective control methods for the manipulators in cont...
Neural networks are developed for controlling a robot-arm and camera system and for processing image...
This book presents and investigates different methods and schemes for the control of robotic arms wh...
Whenever we perform a movement and interact with objects in our environment, our central nervous sys...
grantor: University of TorontoThis thesis summarizes an investigation of the application o...
This paper presents a neural controller that learns goal-oriented obstacle-avoiding reaction strateg...
This paper reports on a continuing research effort to evolve robot controllers with neural networks ...
From infants to adults, each individual undergoes changes both physically and mentally through inter...
A neural map algorithm has been employed to control a five-joint pneu-matic robot arm and gripper th...
In the process of Human-robot skill transfer, we require the robot to reproduce the trajectory of te...
International audienceThis paper presents an original method in the use of neural networks and backp...