Home /Research /Enhanced visual scene understanding through human-robot dialog
HRI

Enhanced visual scene understanding through human-robot dialog

Matthew Johnson‐Roberson, Jeannette Bohg, Gabriel Skantze, Joakim Gustafson, Rolf Carlson, Babak Rasolzadeh, Danica Kragić

Year
2011
Citations
21

Abstract

We propose a novel human-robot-interaction framework for robust visual scene understanding. Without any a-priori knowledge about the objects, the task of the robot is to correctly enumerate how many of them are in the scene and segment them from the background. Our approach builds on top of state-of-the-art computer vision methods, generating object hypotheses through segmentation. This process is combined with a natural dialog system, thus including a `human in the loop' where, by exploiting the natural conversation of an advanced dialog system, the robot gains knowledge about ambiguous situations. We present an entropy-based system allowing the robot to detect the poorest object hypotheses and query the user for arbitration. Based on the information obtained from the human-robot dialog, the scene segmentation can be re-seeded and thereby improved. We present experimental results on real data that show an improved segmentation performance compared to segmentation without interaction.

Keywords

Computer scienceArtificial intelligenceDialog boxComputer visionRobotSegmentationObject (grammar)Process (computing)Human–computer interaction

Related papers

Browse all HRI papers