Detailseite
Projekt Druckansicht

Die Physical Exploration Challenge: Roboter, die lernen, Freiheitsgrade der Welt zu entdecken, zu bewegen und zu explorieren

Fachliche Zuordnung Bild- und Sprachverarbeitung, Computergraphik und Visualisierung, Human Computer Interaction, Ubiquitous und Wearable Computing
Förderung Förderung von 2014 bis 2020
Projektkennung Deutsche Forschungsgemeinschaft (DFG) - Projektnummer 260200664
 
Erstellungsjahr 2019

Zusammenfassung der Projektergebnisse

Actively seeking for information, exploring the environment and thereby acquiring a model of the environment is a crucial aspect of intelligent behavior. Such behavior is also described in terms of curiosity, or the intrinsic motivation to learn about the environment. The goal of this project was to develop methods to realize such behavior concretely in the context of a physical world, where a robot needs to physically explore and interact with its environment so as to uncover its physical and kinematic structure. In the course of this project we developed new approaches to represent the belief state of the agent, which represents the current state of knowledge and uncertainty about the structure and the state of the world. Based on this we developed efficient strategies to explore the environment to increase and refine this belief state. A focus of our work was on how and what to represent probabilistically to enable information gain metrics that drive exploratory robot behavior to discover DoFs. Further, to support the exploration and acquisition of information of the DoFs in the environment, we developed novel perceptual skills for the robot. In particular, we extended methods for online perception of articulated objects from interactions to segment and reconstruct the shape of the links of the articulated objects. We developed methods to plan robust actions that generate rich interactive information to reduce the uncertainty about the structure of the environment exploiting the probabilistic representation over kinematic structures. Finally, we contributed novel methods to acquire manipulation skills to explore and operate DoFs. Our research focused on sample-efficient Reinforcement Learning approach that require a low amount of human supervision and real-robot interaction time but generalize to a large range of different environments.

Projektbezogene Publikationen (Auswahl)

 
 

Zusatzinformationen

Textvergrößerung und Kontrastanpassung