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Visual information abstraction for interactive robot learning

Kai Zhou, Andreas Richtsfeld, Michael Zillich, Markus Vincze, Alen Vrečko, Danijel Skočaj

发表年份
2011
引用次数
11

摘要

Semantic visual perception for knowledge acquisition plays an important role in human cognition, as well as in the learning process of any cognitive robot. In this paper, we present a visual information abstraction mechanism designed for continuously learning robotic systems. We generate spatial information in the scene by considering plane estimation and stereo line detection coherently within a unified probabilistic framework, and show how spaces of interest (SOIs) are generated and segmented using the spatial information. We also demonstrate how the existence of SOIs is validated in the long-term learning process. The proposed mechanism facilitates robust visual information abstraction which is a requirement for continuous interactive learning. Experiments demonstrate that with the refined spatial information, our approach provides accurate and plausible representation of visual objects.

关键词

Computer scienceHuman–computer interactionAbstractionInteractive visual analysisRobotArtificial intelligenceVisual analyticsVisualization

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