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Automated Tracking and Grasping of a Moving Object with a Robotic Hand-Eye System
- IEEE Transactions on Robotics and Automation
, 1991
"... Most robotic grasping tasks assume a stationary or fixed object. In this paper, we explore the requirements for tracking and grasping a moving object. The focus of our work is to achieve a high level of interaction between a real-time vision system capable of tracking moving objects in 3-D and a rob ..."
Abstract
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Cited by 89 (7 self)
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Most robotic grasping tasks assume a stationary or fixed object. In this paper, we explore the requirements for tracking and grasping a moving object. The focus of our work is to achieve a high level of interaction between a real-time vision system capable of tracking moving objects in 3-D and a robot arm equipped with a dexterous hand that can be used pick up a moving object. We are interested in exploring the interplay of hand-eye coordination for dynamic grasping tasks such as grasping of parts on a moving conveyor system, assembly of articulated parts or for grasping from a mobile robotic system. Coordination between an organism's sensing modalities and motor control system is a hallmark of intelligent behavior, and we are pursuing the goal of building an integrated sensing and actuation system that can operate in dynamic as opposed to static environments. The system we have built addresses three distinct problems in robotic hand-eye coordination for grasping moving objects: fast computation of 3-d motion parameters from vision, predictive control of moving robotic arm to track a moving oblect, and grasp planning. The system is able to operate at approximately human arm movement rates, and we present experimenatl result in which a moving model train is tracked, stably grasped, and picked up by the system. The algorithms we have developed that relate sensing to actuation are quite general and applicable to a variety of complex robotic tasks that require visual feedback for arm and hand control.
Is bottom-up attention useful for object recognition
- In IEEE Conference on Computer Vision and Pattern Recognition (CVPR
, 2004
"... A key problem in learning multiple objects from unlabeled images is that it is a priori impossible to tell which part of the image corresponds to each individual object, and which part is irrelevant clutter which is not associated to the objects. We investigate empirically to what extent pure bottom ..."
Abstract
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Cited by 41 (5 self)
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A key problem in learning multiple objects from unlabeled images is that it is a priori impossible to tell which part of the image corresponds to each individual object, and which part is irrelevant clutter which is not associated to the objects. We investigate empirically to what extent pure bottom-up attention can extract useful information about the location, size and shape of objects from images and demonstrate how this information can be utilized to enable unsupervised learning of objects from unlabeled images. Our experiments demonstrate that the proposed approach to using bottom-up attention is indeed useful for a variety of applications. 1.
Selective visual attention enables learning and recognition of multiple objects in cluttered scenes
- Computer Vision and Image Understanding
, 2005
"... multiple objects in cluttered scenes ..."

