This paper presents a framework for learning visual representations from unlabeled video demonstrations captured from multiple viewpoints. We show that these representations are applicable for imitating several robotic tasks, including pick and place. We optimize a recently proposed self-supervised learning algorithm by applying contrastive learning to enhance task-relevant information while suppressing irrelevant information in the feature embeddings. We validate the proposed method on the publicly available Multi-View Pouring and a custom Pick and Place data sets and compare it with the TCN triplet baseline. We evaluate the learned representations using three metrics: viewpoint alignment, stage classification and reinforcement learning, a...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
Traditional imitation learning approaches usually collect demonstrations by teleoperation, kinesthet...
En col·laboració amb la Universitat de Barcelona (UB) i la Universitat Rovira i Virgili (URV).The ne...
This thesis presents a novel self-supervised approach of learning visual representations from videos...
International audienceObserving a human demonstrator manipulate objects provides a rich, scalable an...
We study how visual representations pre-trained on diverse human video data can enable data-efficien...
Contrastive Learning has recently received interest due to its success in self-supervised representa...
We present DOME, a novel method for one-shot imitation learning, where a task can be learned from ju...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
In this work, we introduce a novel method to learn everyday-like multistage tasks from a single huma...
Reward function specification, which requires considerable human effort and iteration, remains a maj...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
We aim to teach robots to perform simple object manipulation tasks by watching a single video demons...
This paper proposes an end-to-end learning from demonstration framework for teaching force-based man...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
Traditional imitation learning approaches usually collect demonstrations by teleoperation, kinesthet...
En col·laboració amb la Universitat de Barcelona (UB) i la Universitat Rovira i Virgili (URV).The ne...
This thesis presents a novel self-supervised approach of learning visual representations from videos...
International audienceObserving a human demonstrator manipulate objects provides a rich, scalable an...
We study how visual representations pre-trained on diverse human video data can enable data-efficien...
Contrastive Learning has recently received interest due to its success in self-supervised representa...
We present DOME, a novel method for one-shot imitation learning, where a task can be learned from ju...
Advances in robotics have resulted in increases both in the availability of robots and also their co...
Most people's imagination about robots has been shaped by Hollywood movies or novels, resulting in t...
In this work, we introduce a novel method to learn everyday-like multistage tasks from a single huma...
Reward function specification, which requires considerable human effort and iteration, remains a maj...
Robot learning from demonstration is a method which enables robots to learn in a similar way as huma...
We aim to teach robots to perform simple object manipulation tasks by watching a single video demons...
This paper proposes an end-to-end learning from demonstration framework for teaching force-based man...
We introduce a simple new method for visual imitation learning, which allows a novel robot manipulat...
Traditional imitation learning approaches usually collect demonstrations by teleoperation, kinesthet...
En col·laboració amb la Universitat de Barcelona (UB) i la Universitat Rovira i Virgili (URV).The ne...