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A Continuous Robot Vision Approach for Predicting Shapes and Visually Perceived Weights of Garments

Li Duan, Gerardo Aragón-Camarasa

Year
2022
Citations
8

Abstract

We present a continuous perception approach that learns geometric and physical similarities between garments by continuously observing a garment while a robot picks it up from a table. The aim is to capture and encode geometric and physical characteristics of a garment into a manifold where a decision can be carried out, such as predicting the garment’s shape class and its visually perceived weight. Our approach features an early stop strategy, which means that a robot does not need to observe a full video sequence of a garment being picked up from a crumpled to a hanging state to make a prediction, taking 8 seconds in average to classify garment shapes. In our experiments, we find that our approach achieves prediction accuracies of 93% for shape classification and 98.5% for predicting weights and advances state-of-art approaches in similar robotic perception tasks by <inline-formula xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink"><tex-math notation="LaTeX">$\,22\%$</tex-math></inline-formula> for shape classification.

Keywords

Artificial intelligencePerceptionRobotClothingComputer scienceTable (database)Computer visionClass (philosophy)MathematicsData mining

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