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Task re-encoding in vision-based control systems

Wen‐Chung Chang, João P. Hespanha, A. Stephen Morse, Gregory D. Hager

Year
2002
Citations
15

Abstract

Feedback control systems employing video cameras as sensors have been studied in the robotics community for many years. An especially interesting feature of such systems is that both the process output and the reference set-point are typically observed through the same sensors (i.e., cameras). Due to this unusual architectural feature, it is sometimes possible to achieve precise positioning, despite sensor/actuator and process model imprecision, just as it is in the case of a conventional set-point control system with a perfect loop-integrator and precise output and exogenous reference sensing. But in contrast to a set-point control system where what to choose for an error is usually clear, in vision-based systems there are many choices for errors, each with different attributes. The aim of this paper is to discuss these issues in a fairly general setting and to provide concrete examples to illustrate the concepts involved in geometrical terms.

Keywords

Computer scienceProcess (computing)Feature (linguistics)Artificial intelligenceSet (abstract data type)Task (project management)Encoding (memory)RoboticsActuatorPoint (geometry)

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