Recognizing manipulations performed by a human and the transfer and execution of this by a robot is a difficult problem. We address this in the current study by introducing a novel representation of the relations between objects at decisive time points during a manipulation. Thereby, we encode the essential changes in a visual scenery in a condensed way such that a robot can recognize and learn a manipulation without prior object knowledge. To achieve this we continuously track image segments in the video and construct a dynamic graph sequence. Topological transitions of those graphs occur whenever a spatial relation between some segments has changed in a discontinuous way and these moments are stored in a transition matrix called the seman...
Execution of a manipulation after learning from demonstration many times requires intricate planning...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
eISSN: 1872-793XUnderstanding and learning the semantics of complex manipulation actions are intrigu...
INSPEC Accession Number: 17058376Recognition of human manipulation actions together with the analysi...
In this work we introduce a novel approach for detecting spatiotemporal object-action relations, lea...
In this work we introduce a novel approach for detecting spatiotemporal object-action relations, lea...
INSPEC Accession Number: 18392943Human-robot interaction strongly benefits from fast, predictive act...
Abstract—Execution of a manipulation after learning from demonstration many times requires intricate...
In order to advance action generation and creation in robots beyond simple learned schemas we need ...
Abstract — Automatically segmenting and recognizing human activities from observations typically req...
Execution of a manipulation after learning from demonstration many times requires intricate planning...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
Recognizing manipulations performed by a human and the transfer and execution of this by a robot is ...
eISSN: 1872-793XUnderstanding and learning the semantics of complex manipulation actions are intrigu...
INSPEC Accession Number: 17058376Recognition of human manipulation actions together with the analysi...
In this work we introduce a novel approach for detecting spatiotemporal object-action relations, lea...
In this work we introduce a novel approach for detecting spatiotemporal object-action relations, lea...
INSPEC Accession Number: 18392943Human-robot interaction strongly benefits from fast, predictive act...
Abstract—Execution of a manipulation after learning from demonstration many times requires intricate...
In order to advance action generation and creation in robots beyond simple learned schemas we need ...
Abstract — Automatically segmenting and recognizing human activities from observations typically req...
Execution of a manipulation after learning from demonstration many times requires intricate planning...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...
This dissertation rethinks the problem of robot imitative learning given human demonstrations and pr...