2021
DOI: 10.3390/machines9060112
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A Product Pose Tracking Paradigm Based on Deep Points Detection

Abstract: The paper at hand presents a novel and versatile method for tracking the pose of varying products during their manufacturing procedure. By using modern Deep Neural Network techniques based on Attention models, the most representative points to track an object can be automatically identified using its drawing. Then, during manufacturing, the body of the product is processed with Aluminum Oxide on those points, which is unobtrusive in the visible spectrum, but easily distinguishable from infrared cameras. Our pr… Show more

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Cited by 2 publications
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