4.6 Article

Anthropomorphic Reaching Movement Generating Method for Human-Like Upper Limb Robot

Journal

IEEE TRANSACTIONS ON CYBERNETICS
Volume 52, Issue 12, Pages 13225-13236

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCYB.2021.3107341

Keywords

Trajectory; Robots; Hidden Markov models; Task analysis; Arms; Robot sensing systems; Planning; Gaussian mixture model (GMM); motion planning; reaching movement; sensorimotor model; upper limb robot

Funding

  1. National Natural Science Foundation of China [52027806, 52005191, U1911601, 52075191, U1913205]
  2. Hubei Provincial Natural Science Foundation [2020CFB424]

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This article presents a computational framework for generating anthropomorphic reaching movement with human motion characteristics, imitating the mechanism in the control and realization of human upper limb motions. By establishing a continuous task parametric model using Gaussian mixture regression method, the proposed method achieves smooth trajectory and natural obstacle avoidance in anthropomorphic motion generation.
How to generate anthropomorphic reaching movement remains a challenging problem in service robots and human motor function repair/reconstruction equipment. However, there is no universally accepted computational model in the literature for reproducing the motion of the human upper limb. In response to the problem, this article presents a computational framework for generating reaching movement endowed with human motion characteristics that imitated the mechanism in the control and realization of human upper limb motions. This article first establishes the experimental paradigm of human upper limb functional movements and proposes the characterization of human upper limb movement characteristics and feature movement clustering methods in the joint space. Then, according to the specific task requirements of the upper limb, combined with the human sensorimotor model, the estimation method of the human upper limb natural postures was established. Next, a continuous task parametric model matching the characteristic motion class is established by using the Gaussian mixture regression method. The anthropomorphic motion generation method with the characteristics of the smooth trajectory and the ability of natural obstacle avoidance is proposed. Finally, the anthropomorphic motion generation method proposed in this article is verified by a human-like robot. The measurement index of the human-likeness degree of the trajectory is given. The experimental results show that for all four tested tasks, the human-likeness degrees were greater than 90.8%, and the trajectories' jerk generated by this method is very similar to the trajectories' jerk of humans, which validates the proposed method.

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