DocumentCode :
9658
Title :
Probabilistic Segmentation and Targeted Exploration of Objects in Cluttered Environments
Author :
van Hoof, Herke ; Kroemer, Oliver ; Peters, Jochen
Author_Institution :
Intell. Autonomous Syst. Inst., Tech. Univ. Darmstadt, Darmstadt, Germany
Volume :
30
Issue :
5
fYear :
2014
fDate :
Oct. 2014
Firstpage :
1198
Lastpage :
1209
Abstract :
Creating robots that can act autonomously in dynamic unstructured environments requires dealing with novel objects. Thus, an offline learning phase is not sufficient for recognizing and manipulating such objects. Rather, an autonomous robot needs to acquire knowledge through its own interaction with its environment, without using heuristics encoding human insights about the domain. Interaction also allows information that is not present in static images of a scene to be elicited. Out of a potentially large set of possible interactions, a robot must select actions that are expected to have the most informative outcomes to learn efficiently. In the proposed bottom-up probabilistic approach, the robot achieves this goal by quantifying the expected informativeness of its own actions in information-theoretic terms. We use this approach to segment a scene into its constituent objects. We retain a probability distribution over segmentations. We show that this approach is robust in the presence of noise and uncertainty in real-world experiments. Evaluations show that the proposed information-theoretic approach allows a robot to efficiently determine the composite structure of its environment. We also show that our probabilistic model allows straightforward integration of multiple modalities, such as movement data and static scene features. Learned static scene features allow for experience from similar environments to speed up learning for new scenes.
Keywords :
image segmentation; learning (artificial intelligence); robot vision; statistical distributions; bottom-up probabilistic approach; dynamic unstructured environments; information-theoretic terms; offline learning phase; probabilistic segmentation; probability distribution; static images; static scene features; targeted exploration; Noise; Probabilistic logic; Robot sensing systems; Robustness; Uncertainty; Visualization; Intelligent robots; machine learning; object segmentation; robot vision systems;
fLanguage :
English
Journal_Title :
Robotics, IEEE Transactions on
Publisher :
ieee
ISSN :
1552-3098
Type :
jour
DOI :
10.1109/TRO.2014.2334912
Filename :
6870500
Link To Document :
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