Lifelong learning is fundamental in autonomous robotics for the acquisition and fine-tuning of knowledge through experience. However, conventional deep neural models for action recognition from videos do not account for lifelong learning but rather learn a batch of training data with a predefined number of action classes and samples. Thus, there is the need to develop learning systems with the ability to incrementally process available perceptual cues and to adapt their responses over time. We propose a self-organizing neural architecture for incrementally learning to classify human actions from video sequences. The architecture comprises growing self-organizing networks equipped with recurrent neurons for processing time-varying patterns. ...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
AbstractThe integration of multisensory information plays a crucial role in autonomous robotics to f...
Action recognition is a very challenging and important problem in computer vision. Researchers worki...
Artificial autonomous agents and robots interacting in complex environments are required to continua...
We present a deep neural-network model for lifelong learning inspired by several forms of neuroplast...
The field of robotics is becoming continuously more important, due to the impact it can bring to ou...
Humans continually learn and adapt to new knowledge and environments throughout their lifetimes. Rar...
Continual learning, also known as lifelong learning, is an emerging research topic that has been att...
Humans learn to recognize and manipulate new objects in lifelong settings without forgetting the pre...
The thesis aims to advance cognitive decision-making and motor control using reinforcement learning ...
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
We propose a hierarchical neural architecture able to recognise observed human actions. Each layer i...
Artificial Intelligence aims to mimic natural intelligent learning by using lifelong-machine-learnin...
The development of robust and adaptable intelligent system has been a long standing grand challenge....
The proposed architecture applies the principle of predictive coding and deep learning in a brain-in...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
AbstractThe integration of multisensory information plays a crucial role in autonomous robotics to f...
Action recognition is a very challenging and important problem in computer vision. Researchers worki...
Artificial autonomous agents and robots interacting in complex environments are required to continua...
We present a deep neural-network model for lifelong learning inspired by several forms of neuroplast...
The field of robotics is becoming continuously more important, due to the impact it can bring to ou...
Humans continually learn and adapt to new knowledge and environments throughout their lifetimes. Rar...
Continual learning, also known as lifelong learning, is an emerging research topic that has been att...
Humans learn to recognize and manipulate new objects in lifelong settings without forgetting the pre...
The thesis aims to advance cognitive decision-making and motor control using reinforcement learning ...
Reinforcement learning systems have shown tremendous potential in being able to model meritorious be...
We propose a hierarchical neural architecture able to recognise observed human actions. Each layer i...
Artificial Intelligence aims to mimic natural intelligent learning by using lifelong-machine-learnin...
The development of robust and adaptable intelligent system has been a long standing grand challenge....
The proposed architecture applies the principle of predictive coding and deep learning in a brain-in...
Lifelong learning is a process that involves gradual learning in dynamic environments, mirroring the...
AbstractThe integration of multisensory information plays a crucial role in autonomous robotics to f...
Action recognition is a very challenging and important problem in computer vision. Researchers worki...