2022
DOI: 10.1109/lra.2022.3156656
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Coupled Multiple Dynamic Movement Primitives Generalization for Deformable Object Manipulation

Abstract: Dynamic Movement Primitives (DMP) are widely applied in movement representation due to their ability to encode tasks using generalization properties. However, the coupled multiple DMP generalization cannot be directly solved based on the original DMP formula. Prior works provide satisfactory performance for the coupled DMP generalization in rigid object manipulation, but their extension to deformable objects may degrade due to the intrinsic uncertainty of the deformable model structure and parameters. This pap… Show more

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Cited by 8 publications
(4 citation statements)
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References 18 publications
(21 reference statements)
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“…Teaching the robot about variations in object properties is essential for tasks where the characteristics of objects significantly impact the manipulation process. For instance, in material handling tasks, the robot needs to learn how to handle objects of different shapes, sizes, weights, and materials [85,88]. Demonstrations can be designed to showcase the manipulation of diverse objects, allowing the robot to generalize its learning across a range of scenarios.…”
Section: Task Parametersmentioning
confidence: 99%
See 1 more Smart Citation
“…Teaching the robot about variations in object properties is essential for tasks where the characteristics of objects significantly impact the manipulation process. For instance, in material handling tasks, the robot needs to learn how to handle objects of different shapes, sizes, weights, and materials [85,88]. Demonstrations can be designed to showcase the manipulation of diverse objects, allowing the robot to generalize its learning across a range of scenarios.…”
Section: Task Parametersmentioning
confidence: 99%
“…In another context, [49] considers the assembly use cases and explores the idea that skillful assembly is best represented as dynamic sequences of manipulation primitives, and that such sequences can be automatically discovered by Reinforcement Learning. The authors in [88] extended DMPs to manipulating deformable objects such as ropes or thin films, to account for the uncertainty and variability from the model parameters of the deformable object. Another important aspect of learning is to learn factor which are in non-euclidean spaces.…”
Section: Learning and Generalization Performancementioning
confidence: 99%
“…Prakash et al (2020) extended the real-time adaptation approach incorporating a fuzzy fractional-order sliding mode controller in order to efficiently and stably adapt the demonstrated DMP trajectory to fast movements, such as a ping pong swing. Recently, Cui et al (2022) presented a method for coupling multiple DMPs for modeling robot tasks for transportation tasks of deformable objects.…”
Section: Dmps In Application Scenariosmentioning
confidence: 99%
“…Those methods do not tackle the problem of explicitly controlling the deformation of the object in 3D, and they do not consider collision avoidance in their formulation. We can also find approaches based on Dynamic Movement Primitives (DMP) [10] or human-robot collaborative systems for transport of highly deformable planar materials [11], which do not test collision avoidance against dynamic obstacles.…”
Section: Introductionmentioning
confidence: 99%