The robotics field has been deeply influenced by the advent of deep learning. In recent years, this trend has been characterized by the adoption of large, pretrained models for robotic use cases, which are not compatible with the computational hardware available in robotic systems. Moreover, such large, computationally intensive models impede the low-latency execution which is required for many closed-loop control systems. In this work, we propose different strategies for improving the computational efficiency of the deep-learning models adopted in reinforcement-learning (RL) scenarios. As a use-case project, we consider an image-based RL method on the synergy between push-and-grasp actions. As a first optimization step, we reduce the model...
The development of reinforcement learning attracts more and more attention among researchers. Levera...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
Conventionally programmed systems (e.g. robots) are not able to adapt to unforeseen changes in their...
Reinforcement learning (RL) is a general framework for learning and evaluating intelligent behaviors...
Reinforcement learning (RL) is a broad family of algorithms for training autonomous agents to collec...
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
Reinforcement Learning (RL) has long been used for learning behaviour through agent-collected experi...
Recently, with the development of Artificial Intelligence and Deep Learning in the field of robotics...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
This project is a continuation of the earlier work on reinforcement learning. The project will inve...
Robotics faces many unique challenges as robotic platforms move out of the lab and into the real wor...
The development of reinforcement learning attracts more and more attention among researchers. Levera...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
Conventionally programmed systems (e.g. robots) are not able to adapt to unforeseen changes in their...
Reinforcement learning (RL) is a general framework for learning and evaluating intelligent behaviors...
Reinforcement learning (RL) is a broad family of algorithms for training autonomous agents to collec...
International audienceDeep learning has provided new ways of manipulating, processing and analyzing ...
For robots to perform tasks in the unstructured environments of the real world, they must be able to...
Reinforcement Learning (RL) is a framework to deal with decision-making problems with the goal of fi...
In the past few years, deep reinforcement learning (RL) has shown great potential in learning action...
Designing agents that autonomously acquire skills to complete tasks in their environments has been a...
Reinforcement Learning (RL) has long been used for learning behaviour through agent-collected experi...
Recently, with the development of Artificial Intelligence and Deep Learning in the field of robotics...
Robots are nowadays increasingly required to deal with (partially) unknown tasks and situations. The...
This project is a continuation of the earlier work on reinforcement learning. The project will inve...
Robotics faces many unique challenges as robotic platforms move out of the lab and into the real wor...
The development of reinforcement learning attracts more and more attention among researchers. Levera...
Deep learning holds promise for learning complex patterns from data, which is especially useful when...
Conventionally programmed systems (e.g. robots) are not able to adapt to unforeseen changes in their...