Artificial neural networks (ANNs) have been used successfully in various practical problems. Though extensive improvements on different types of ANNs have been made to improve their performance, each ANN design still experiences its own limitations. The existing digital human models are mature enough to provide accurate and useful results for different tasks and scenarios under various conditions. There is, however, a critical need for these models to run in real time, especially those with large-scale problems like motion prediction which can be computationally demanding. For even small changes to the task conditions, the motion simulation needs to run for a relatively long time (minutes to tens of minutes). Thus, there can be a limited nu...
An adaptive learning algorithm using an artificial neural network (ANN) has been proposed to predict...
Though continuous advances in the field of human pose estimation, it remains a challenge to retrieve...
This thesis introduces a Recurrent Neural Network (RNN) framework as a generative model for synthesi...
As the potential applications for artificial intelligence, and thus neural networks expand, and as t...
This research project develops a new deep neural network model for real-time human movement predicti...
This study examines the use of neural networks for prediction of dynamical systems. After a brief in...
Significant technical development over the last years has lately been showing more and more promise ...
We consider continuous-time recurrent neural networks as dynamical models for the simulation of huma...
Artificial neural networks (ANNs) have become a popular means of solving complex problems in predict...
In recent years, motion capture systems have emerged, allowing for a broad and ever-expanding range ...
In the past, a robotic arm needed to be taught to carry out certain tasks, such as selecting a sin...
In the rapidly modernized world of the 21st century, robots are beginning to play a significant role...
Abstract:- This paper describes a new neural network able to adapt itself, both its parameters and i...
© 2019, The Author(s). Human motion prediction is a challenging problem due to the complicated human...
Planning collision-free motions for robots with many degrees of freedom is challenging in environmen...
An adaptive learning algorithm using an artificial neural network (ANN) has been proposed to predict...
Though continuous advances in the field of human pose estimation, it remains a challenge to retrieve...
This thesis introduces a Recurrent Neural Network (RNN) framework as a generative model for synthesi...
As the potential applications for artificial intelligence, and thus neural networks expand, and as t...
This research project develops a new deep neural network model for real-time human movement predicti...
This study examines the use of neural networks for prediction of dynamical systems. After a brief in...
Significant technical development over the last years has lately been showing more and more promise ...
We consider continuous-time recurrent neural networks as dynamical models for the simulation of huma...
Artificial neural networks (ANNs) have become a popular means of solving complex problems in predict...
In recent years, motion capture systems have emerged, allowing for a broad and ever-expanding range ...
In the past, a robotic arm needed to be taught to carry out certain tasks, such as selecting a sin...
In the rapidly modernized world of the 21st century, robots are beginning to play a significant role...
Abstract:- This paper describes a new neural network able to adapt itself, both its parameters and i...
© 2019, The Author(s). Human motion prediction is a challenging problem due to the complicated human...
Planning collision-free motions for robots with many degrees of freedom is challenging in environmen...
An adaptive learning algorithm using an artificial neural network (ANN) has been proposed to predict...
Though continuous advances in the field of human pose estimation, it remains a challenge to retrieve...
This thesis introduces a Recurrent Neural Network (RNN) framework as a generative model for synthesi...