Robots must be able to adapt their motor behavior to unexpected situations in order to safely move among humans. A necessary step is to be able to predict failures, which result in behavior abnormalities and may cause irrecoverable damage to the robot and its surroundings, i.e. humans. In this paper we build a predictive model of sensor traces that enables early failure detection by means of a skill memory. Specifically, we propose an architecture based on a biped locomotion solution with improved robustness due to sensory feedback, and extend the concept of Associative Skill Memories (ASM) to periodic movements by introducing several mechanisms into the training workflow, such as linear interpolation and regression into a Dynamical Motion ...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
For performing tasks in their target environments, autonomous robots usually execute and combine ski...
AbstractIt is expected that robots could operate autonomously in extreme environments without human ...
The inclusion of perceptual information in the operation of a dynamic robot (interacting with its en...
To achieve robust autonomy, robots must avoid getting stuck in states from which they cannot recover...
To achieve robust autonomy, robots must avoid getting stuck in states from which they cannot recove...
It is known that the supervision and learning of robotic executions is not a trivial problem. Nowada...
International audienceNeurobiology studies showed that the role of the Anterior Cingulate Cortex of ...
In this thesis one of the negative effects of learning from scratch on the durability of LEO is anal...
Research on motor learning has emphasized that errors drive motor adaptation. Thereby, several resea...
The Delft Biorobotics Laboratory develops bipedal humanoid robots. One of these robots, called LEO, ...
In this letter, we present a human-in-the-loop learning framework for mobile robots to generate effe...
This paper presents a novel approach to the runtime detection of faults in autonomous mobile robots,...
In order to address the problem of failure detection in the robotics domain, we present in this cont...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
For performing tasks in their target environments, autonomous robots usually execute and combine ski...
AbstractIt is expected that robots could operate autonomously in extreme environments without human ...
The inclusion of perceptual information in the operation of a dynamic robot (interacting with its en...
To achieve robust autonomy, robots must avoid getting stuck in states from which they cannot recover...
To achieve robust autonomy, robots must avoid getting stuck in states from which they cannot recove...
It is known that the supervision and learning of robotic executions is not a trivial problem. Nowada...
International audienceNeurobiology studies showed that the role of the Anterior Cingulate Cortex of ...
In this thesis one of the negative effects of learning from scratch on the durability of LEO is anal...
Research on motor learning has emphasized that errors drive motor adaptation. Thereby, several resea...
The Delft Biorobotics Laboratory develops bipedal humanoid robots. One of these robots, called LEO, ...
In this letter, we present a human-in-the-loop learning framework for mobile robots to generate effe...
This paper presents a novel approach to the runtime detection of faults in autonomous mobile robots,...
In order to address the problem of failure detection in the robotics domain, we present in this cont...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
This paper presents a novel approach to the run-time detection of faults in autonomous mobile robots...
For performing tasks in their target environments, autonomous robots usually execute and combine ski...
AbstractIt is expected that robots could operate autonomously in extreme environments without human ...