From pixels to objects: enabling a spatial model for humanoid social robots

ICRA(2009)

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摘要
This work adds the concept of object to an existent low-level attention system of the humanoid robot iCub. The objects are defined as clusters of SIFT visual features. When the robot first encounters an unknown object, found to be within a certain (small) distance from its eyes, it stores a cluster of the features present within an interval about that distance, using depth perception. Whenever a previously stored object crosses the robot's field of view again, it is recognized, mapped into an egocentrical frame of reference, and gazed at. This mapping is persistent, in the sense that its identification and position are kept even if not visible by the robot. Features are stored and recognized in a bottom-up way. Experimental results on the humanoid robot iCub validate this approach. This work creates the foundation for a way of linking the bottom-up attention system with top-down, object-oriented information provided by humans.
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关键词
spatial model,unknown object,egocentrical frame,existent low-level attention system,sift visual feature,depth perception,humanoid robot icub validate,humanoid robot icub,humanoid social robot,object-oriented information,bottom-up attention system,data mining,pixel,humanoid robot,object recognition,frame of reference,cognitive robotics,databases,feature extraction,field of view,robot kinematics,social robot,torso,bottom up,humanoid robots,top down
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