Autonomous learning of robust visual object detection and identification on a humanoid.

ICDL-EPIROB(2012)

引用 10|浏览84
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摘要
In this work we introduce a technique for a humanoid robot to autonomously learn the representations of objects within its visual environment. Our approach involves an attention mechanism in association with feature based segmentation that explores the environment and provides object samples for training. These samples are learned for further object identification using Cartesian Genetic Programming (CGP). The learned identification is able to provide robust and fast segmentation of the objects, without using features. We showcase our system and its performance on the iCub humanoid robot.
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关键词
genetic algorithms,humanoid robots,image segmentation,object detection,robot vision,Cartesian genetic programming,autonomous learning,feature based segmentation,iCub humanoid robot,object identification,object segmentation,robust visual object detection,visual environment
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