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arxiv 2009.14681 v2 pith:S27UFZA5 submitted 2020-09-30 cs.RO cs.AI

Encoding cloth manipulations using a graph of states and transitions

classification cs.RO cs.AI
keywords clothmanipulationrepresentationstatestasksallowsgraphmotion
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Cloth manipulation is very relevant for domestic robotic tasks, but it presents many challenges due to the complexity of representing, recognizing and predicting the behaviour of cloth under manipulation. In this work, we propose a generic, compact and simplified representation of the states of cloth manipulation that allows for representing tasks as sequences of states and transitions. We also define a Cloth Manipulation Graph that encodes all the strategies to accomplish a task. Our novel representation is used to encode two different cloth manipulation tasks, learned from an experiment with human subjects with video and motion data. We show how our simplified representation allows to obtain a map of meaningful motion primitives.

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